Quart¶
Added in version 3.2.
Overview¶
The Quart module provides routines for automatically analyzing DICOM images of the Quart DVT phantom typically used with the Halcyon linac system. It can load a folder or zip file of images, correcting for translational and rotational offsets.
Added in version 3.2.
Warning
These algorithms have only a limited amount of testing data and results should be scrutinized. Further, the algorithm is more likely to change in the future when a more robust test suite is built up. If you’d like to submit data, enter it here.
Typical Use¶
The Quart phantom analysis follows a similar pattern of load/analyze/output as the rest of the library. Unlike the CatPhan analysis, customization is not a goal, as the phantoms and analyses are much more well-defined. I.e. there’s less of a use case for custom phantoms in this scenario.
To use the Quart analysis, import the class:
from pylinac import QuartDVT
from pylinac.quart import QuartDVT # equivalent import
And then load, analyze, and view the results:
Load images – Loading can be done with a directory or zip file:
quart_folder = r"C:/CT/Quart/Sept 2021" quart = QuartDVT(quart_folder)
or load from zip:
quart_folder = ( r"C:/CT/Quart/Sept 2021.zip" # this contains all the DICOM files of the scan ) quart = QuartDVT.from_zip(quart_folder)
Analyze – Analyze the dataset:
quart.analyze()
View the results – Reviewing the results can be done in text or dict format as well as images:
# print text to the console print(quart.results()) # view analyzed image summary quart.plot_analyzed_image() # view images independently quart.plot_images() # save the images quart.save_images() # finally, save a PDF quart.publish_pdf("myquart.pdf")
Hypersight¶
Added in version 3.17.
The Hypersight variant of the Quart phantom includes a water ROI in the HU module. The Quart analysis automatically detects whether the water vial is present and filled, and reports the additional ROI analysis results for the water bubble.
Warning
Changed in version 3.37.
In earlier versions, the Hypersight variant had its own class.
Starting with v3.37, there is now a unified Quart Phantom class
that automatically detects the water vial. This class is now deprecated but remains in the
event the automatic water vial detection of the QuartDVT class is incorrect.
It will be removed in a future release.
Advanced Use¶
Adjusting ROI locations¶
To adjust ROI locations, see the sister section for CT analysis: Adjusting ROI locations.
Using results_data¶
Using the Quart module in your own scripts? While the analysis results can be printed out,
if you intend on using them elsewhere (e.g. in an API), they can be accessed the easiest by using the results_data() method
which returns a QuartDVTResult instance.
Continuing from above:
data = quart.results_data()
data.hu_module.roi_radius_mm
# and more
# return as a dict
data_dict = quart.results_data(as_dict=True)
data_dict["hu_module"]["roi_radius_mm"]
...
Analysis Parameters¶
See pylinac.quart.QuartDVT.analyze() for details.
HU Tolerance: The tolerance in HU for the phantom materials.
Scaling tolerance: The tolerance in mm for the scaling of the phantom.
Slice thickness tolerance: The tolerance in mm for the slice thickness.
CNR Ratio: The required minimum ratio for the contrast-to-noise to be considered passing.
X adjustment: A fine-tuning adjustment to the detected x-coordinate of the phantom center. This will move the detected phantom position by this amount in the x-direction in mm. Positive values move the phantom to the right.
Y adjustment: A fine-tuning adjustment to the detected y-coordinate of the phantom center. This will move the detected phantom position by this amount in the y-direction in mm. Positive values move the phantom down.
Angle adjustment: A fine-tuning adjustment to the detected angle of the phantom. This will rotate the phantom by this amount in degrees. Positive values rotate the phantom clockwise.
ROI size factor: A fine-tuning adjustment to the ROI sizes of the phantom. This will scale the ROIs by this amount. Positive values increase the ROI sizes. In contrast to the scaling adjustment, this adjustment effectively makes the ROIs bigger or smaller, but does not adjust their position.
Scaling factor: A fine-tuning adjustment to the detected magnification of the phantom. This will zoom the ROIs and phantom outline (if applicable) by this amount. In contrast to the roi size adjustment, the scaling adjustment effectively moves the phantom and ROIs closer or further from the phantom center. I.e. this zooms the outline and ROI positions, but not ROI size.
Origin slice: The slice number that corresponds to the HU linearity slice. This is a fallback mechanism in case the automatic detection fails.
Algorithm¶
The Quart algorithm is nearly the same as the CBCT Algorithm. The image loading and localization use the same type of logic.
High-Resolution¶
For high-resolution resolvability, the Quart manual does describe an equation for calculating the MTF using the line-spread function (LSF) of the phantom edge. For simplicity, we use the Varian Halcyon IPA document, which outlines a similar logic with specific measurements of the -700 -> -200 HU distance using a vertical and horizontal profile.
Within pylinac, to reduce the number of input parameters and also match commissioning values, these are the values used. The result is the distance in mm from these two HU values.
Note
The images in pylinac are “grounded”, meaning -1000 -> 0. So the actual algorithm search values are +300 HU (-700 + 1000) and +800 HU (-200 + 1000).
CNR/SNR¶
While normally the contrast algorithm is chosen by the user, for the Quart phantom it is hardcoded based on the equations in the manual. Specifically, contrast to noise is defined as:
where the values are the median pixel value of the given ROI. Poly was given as a possible recommendations in the Quart user manual. Acrylic is the base material of the phantom, i.e. background.
Note
The numerator is an absolute value.
The signal to noise is defined as:
where \(\sigma\) is the standard deviation of the Polystyrene ROI pixel values. The poly ROI was chosen by us to match the selection for the CNR equation.
Interpreting Results¶
The outcome from analyzing the phantom available in RadMachine or from
results_data is:
phantom_model: The model of the phantom, e.g. “Quart DVT”.phantom_roll_deg: The roll of the phantom in degrees.origin_slice: The slice number of the origin image.num_images: The number of images given in the dataset.hu_module: A dictionary of the HU module results with the following items:offset: The offset of the module slice in mm from the origin slice.measured_slice_thickness_mm: The measured slice thickness in mm.signal_to_noise: The signal to noise ratio.contrast_to_noise: The contrast to noise ratio.roi_settings: A dictionary of the ROI settings. The keys are the HU material such asAcrylicwith the following items:value: The mean value of the ROI in HU.angle: The angle of the ROI in degrees.distance: The distance of the ROI from the center of the phantom in mm.radius: The radius of the ROI in mm.distance_pixels: The distance of the ROI from the center of the phantom in pixels.radius_pixels: The radius of the ROI in pixels.angle_corrected: The angle of the ROI corrected for phantom roll in degrees.
rois: A dictionary of ROI results where the key is the name of the material. Each material has the following items:name: The name of the material.value: The mean value of the ROI in HU.stdev: The standard deviation of the ROI in HU.difference: The difference in HU from the Acrylic ROI.nominal_value: The nominal value of the material in HU.passed: A boolean indicating if the material HU was within tolerance.
uniformity_module: A dictionary of the uniformity module results with the following items:offset: The offset of the module slice in mm from the origin slice.passed: A boolean indicating if the module passed.rois: A dictionary of ROI results where the key is the name of the material. Each material has the following items:name: The name of the material.value: The mean value of the ROI in HU.stdev: The standard deviation of the ROI in HU.difference: The difference in HU from the Acrylic ROI.nominal_value: The nominal value of the material in HU.passed: A boolean indicating if the material HU was within tolerance.
roi_settings: A dictionary of the ROI settings. The keys are the HU material such asAcrylicwith the following items:value: The mean value of the ROI in HU.angle: The angle of the ROI in degrees.distance: The distance of the ROI from the center of the phantom in mm.radius: The radius of the ROI in mm.distance_pixels: The distance of the ROI from the center of the phantom in pixels.radius_pixels: The radius of the ROI in pixels.angle_corrected: The angle of the ROI corrected for phantom roll in degrees.
geometric_module: A dictionary containing the following items:offset: The offset of the module slice in mm from the origin slice.distances: A dictionary of the phantom size itself in horizontal and vertical dimensions in mm. The keys arehorizontal mmandvertical mm.high_contrast_distances: A dictionary of the high contrast distances in mm. See: High-Resolution. The key is the region of the line and the value is the distance in mm.mean_high_contrast_distance: The mean of the high contrast distances in mm.
API Documentation¶
- class pylinac.quart.QuartDVT(folderpath: str | Sequence[str] | Path | Sequence[Path] | Sequence[BytesIO], check_uid: bool = True, memory_efficient_mode: bool = False, is_zip: bool = False)[source]¶
Bases:
CatPhanBase,ResultsDataMixin[QuartDVTResult]A class for loading and analyzing CT DICOM files of a Quart phantom that comes with the Halcyon. Analyzes: HU Uniformity, Image Scaling & HU Linearity.
Parameters¶
- folderpathstr, list of strings, or Path to folder
String that points to the CBCT image folder location.
- check_uidbool
Whether to enforce raising an error if more than one UID is found in the dataset.
- memory_efficient_modebool
Whether to use a memory efficient mode. If True, the DICOM stack will be loaded on demand rather than all at once. This will reduce the memory footprint but will be slower by ~25%. Default is False.
Raises¶
- NotADirectoryError
If folder str passed is not a valid directory.
- FileNotFoundError
If no CT images are found in the folder
- hu_module_class¶
alias of
QuartHUModule
- uniformity_module_class¶
alias of
QuartUniformityModule
- geometry_module_class¶
alias of
QuartGeometryModule
- analyze(hu_tolerance: int | float = 40, scaling_tolerance: int | float = 1, thickness_tolerance: int | float = 0.2, cnr_threshold: int | float = 5, x_adjustment: float = 0, y_adjustment: float = 0, angle_adjustment: float = 0, roi_size_factor: float = 1, scaling_factor: float = 1, origin_slice: int | None = None, roll_slice_offset: float = -8)[source]¶
Single-method full analysis of Quart DICOM files.
Parameters¶
- hu_toleranceint
The HU tolerance value for both HU uniformity and linearity.
- scaling_tolerancefloat, int
The scaling tolerance in mm of the geometric nodes on the HU linearity slice (CTP404 module).
- thickness_tolerancefloat, int
The tolerance of the thickness calculation in mm, based on the wire ramps in the CTP404 module.
Warning
Thickness accuracy degrades with image noise; i.e. low mAs images are less accurate.
- cnr_thresholdfloat, int
The threshold for “detecting” low-contrast image. See RTD for calculation info.
Deprecated since version 3.0: Use visibility parameter instead.
- x_adjustment: float
A fine-tuning adjustment to the detected x-coordinate of the phantom center. This will move the detected phantom position by this amount in the x-direction in mm. Positive values move the phantom to the right.
- y_adjustment: float
A fine-tuning adjustment to the detected y-coordinate of the phantom center. This will move the detected phantom position by this amount in the y-direction in mm. Positive values move the phantom down.
- angle_adjustment: float
A fine-tuning adjustment to the detected angle of the phantom. This will rotate the phantom by this amount in degrees. Positive values rotate the phantom clockwise.
- roi_size_factor: float
A fine-tuning adjustment to the ROI sizes of the phantom. This will scale the ROIs by this amount. Positive values increase the ROI sizes. In contrast to the scaling adjustment, this adjustment effectively makes the ROIs bigger or smaller, but does not adjust their position.
- scaling_factor: float
A fine-tuning adjustment to the detected magnification of the phantom. This will zoom the ROIs and phantom outline (if applicable) by this amount. In contrast to the roi size adjustment, the scaling adjustment effectively moves the phantom and ROIs closer or further from the phantom center. I.e. this zooms the outline and ROI positions, but not ROI size.
- origin_sliceint, None
The slice number of the HU linearity slice. If None, will be automatically determined. This is a fallback method in case the automatic method fails.
- roll_slice_offsetfloat
The offset in mm from
origin_sliceused to select the slice for phantom roll detection. The phantom roll is determined based on the two inserts in the central vertical axis of the HU module, but this detection can be influenced by the inserts used for slice thickness. Adjusting this offset to select a different slice can enhance the accuracy of phantom roll detection.
- plotly_analyzed_images(show: bool = True, show_legend: bool = True, show_colorbar: bool = True, **kwargs) dict[str, Figure][source]¶
Plot the analyzed set of images to Plotly figures.
Parameters¶
- showbool
Whether to show the plot.
- show_colorbarbool
Whether to show the colorbar on the plot.
- show_legendbool
Whether to show the legend on the plot.
- kwargs
Additional keyword arguments to pass to the plot.
Returns¶
- dict
A dictionary of the Plotly figures where the key is the name of the image and the value is the figure.
- plot_analyzed_image(show: bool = True, **plt_kwargs) None[source]¶
Plot the images used in the calculation and summary data.
Parameters¶
- showbool
Whether to plot the image or not.
- plt_kwargsdict
Keyword args passed to the plt.figure() method. Allows one to set things like figure size.
- plot_analyzed_subimage(*args, **kwargs) None[source]¶
Plot a specific component of the CBCT analysis.
Parameters¶
- subimage{‘hu’, ‘un’, ‘sp’, ‘lc’, ‘mtf’, ‘lin’, ‘prof’, ‘side’}
The subcomponent to plot. Values must contain one of the following letter combinations. E.g.
linearity,linear, andlinwill all draw the HU linearity values.hudraws the HU linearity image.undraws the HU uniformity image.spdraws the Spatial Resolution image.lcdraws the Low Contrast image (if applicable).mtfdraws the RMTF plot.lindraws the HU linearity values. Used withdelta.profdraws the HU uniformity profiles.sidedraws the side view of the phantom with lines of the module locations.
- deltabool
Only for use with
lin. Whether to plot the HU delta or actual values.- showbool
Whether to actually show the plot.
- results(as_str: bool = True) str | tuple[str, ...][source]¶
Return the results of the analysis as a string. Use with print().
- plot_images(show: bool = True, **plt_kwargs) dict[str, Figure][source]¶
Plot all the individual images separately.
Parameters¶
- show
Whether to show the images.
- plt_kwargs
Keywords to pass to matplotlib for figure customization.
- save_images(directory: Path | str | None = None, to_stream: bool = False, **plt_kwargs) list[Path] | dict[str, BytesIO][source]¶
Save separate images to disk or stream.
Parameters¶
- directory
The directory to write the images to. If None, will use current working directory
- to_stream
Whether to write to stream or disk. If True, will return streams. Directory is ignored in that scenario.
- plt_kwargs
Keywords to pass to matplotlib for figure customization.
- publish_pdf(filename: str | Path, notes: str | None = None, open_file: bool = False, metadata: dict | None = None, logo: Path | str | None = None) None[source]¶
Publish (print) a PDF containing the analysis and quantitative results.
Parameters¶
- filename(str, file-like object}
The file to write the results to.
- notesstr, list of strings
Text; if str, prints single line. If list of strings, each list item is printed on its own line.
- open_filebool
Whether to open the file using the default program after creation.
- metadatadict
Extra data to be passed and shown in the PDF. The key and value will be shown with a colon. E.g. passing {‘Author’: ‘James’, ‘Unit’: ‘TrueBeam’} would result in text in the PDF like: ————– Author: James Unit: TrueBeam ————–
- logo: Path, str
A custom logo to use in the PDF report. If nothing is passed, the default pylinac logo is used.
- property catphan_size: float¶
The expected size of the phantom in pixels, based on a 20cm wide phantom.
- clear_captured_warnings() None¶
Clear the list of captured warnings.
- find_origin_slice() int¶
Using a brute force search of the images, find the median HU linearity slice.
This method walks through all the images and takes a collapsed circle profile where the HU linearity ROIs are. If the profile contains both low (<800) and high (>800) HU values and most values are the same (i.e. it’s not an artifact), then it can be assumed it is an HU linearity slice. The median of all applicable slices is the center of the HU slice.
Returns¶
- int
The middle slice of the HU linearity module.
- find_phantom_axis()¶
We fit all the center locations of the phantom across all slices to a 1D poly function instead of finding them individually for robustness.
Normally, each slice would be evaluated individually, but the RadMachine jig gets in the way of detecting the HU module (🤦♂️). To work around that in a backwards-compatible way we instead look at all the slices and if the phantom was detected, capture the phantom center. ALL the centers are then fitted to a 1D poly function and passed to the individual slices. This way, even if one slice is messed up (such as because of the phantom jig), the poly function is robust to give the real center based on all the other properly-located positions on the other slices.
- find_phantom_roll(func: Callable | None = None) float¶
Determine the “roll” of the phantom.
This algorithm uses the two air bubbles in the HU slice and the resulting angle between them.
Parameters¶
- func
A callable to sort the air ROIs.
Returns¶
float : the angle of the phantom in degrees.
- classmethod from_demo_images()¶
Construct a CBCT object from the demo images.
- classmethod from_url(url: str, check_uid: bool = True)¶
Instantiate a CBCT object from a URL pointing to a .zip object.
Parameters¶
- urlstr
URL pointing to a zip archive of CBCT images.
- check_uidbool
Whether to enforce raising an error if more than one UID is found in the dataset.
- classmethod from_zip(zip_file: str | ZipFile | BinaryIO, check_uid: bool = True, memory_efficient_mode: bool = False)¶
Construct a CBCT object and pass the zip file.
Parameters¶
- zip_filestr, ZipFile
Path to the zip file or a ZipFile object.
- check_uidbool
Whether to enforce raising an error if more than one UID is found in the dataset.
- memory_efficient_modebool
Whether to use a memory efficient mode. If True, the DICOM stack will be loaded on demand rather than all at once. This will reduce the memory footprint but will be slower by ~25%. Default is False.
Raises¶
FileExistsError : If zip_file passed was not a legitimate zip file. FileNotFoundError : If no CT images are found in the folder
- get_captured_warnings() list[dict]¶
Retrieve the list of captured warnings.
- localize(origin_slice: int | None) None¶
Find the slice number of the catphan’s HU linearity module and roll angle
- property mm_per_pixel: float¶
The millimeters per pixel of the DICOM images.
- property num_images: int¶
The number of images loaded.
- plot_side_view(axis: Axes) None¶
Plot a view of the scan from the side with lines showing detected module positions
- refine_origin_slice(initial_slice_num: int) int¶
Apply a refinement to the origin slice. This was added to handle the catphan 604 at least due to variations in the length of the HU plugs.
- results_data(as_dict: bool = False, as_json: bool = False, by_alias: bool = False, exclude: set[str] | None = None) T | dict | str¶
Present the results data and metadata as a dataclass, dict, or tuple. The default return type is a dataclass.
Parameters¶
- as_dictbool
If True, return the results as a dictionary.
- as_jsonbool
If True, return the results as a JSON string. Cannot be True if as_dict is True.
- by_aliasbool
If True, use the alias names of the dataclass fields. These are generally the more human-readable names.
- excludeset
A set of fields to exclude from the results data.
- save_analyzed_image(filename: str | Path | BinaryIO, **kwargs) None¶
Save the analyzed summary plot.
Parameters¶
- filenamestr, file object
The name of the file to save the image to.
- kwargs :
Any valid matplotlib kwargs.
- save_analyzed_subimage(filename: str | BinaryIO, subimage: str = 'hu', delta: bool = True, **kwargs) Figure | None¶
Save a component image to file.
Parameters¶
- filenamestr, file object
The file to write the image to.
- subimagestr
See
plot_analyzed_subimage()for parameter info.- deltabool
Only for use with
lin. Whether to plot the HU delta or actual values.
- to_quaac(path: str | Path, performer: User, primary_equipment: Equipment, format: Literal['json', 'yaml'] = 'yaml', attachments: list[Attachment] | None = None, overwrite: bool = False, **kwargs) None¶
Write an analysis to a QuAAC file. This will include the items from results_data() and the PDF report.
Parameters¶
- pathstr, Path
The file to write the results to.
- performerUser
The user who performed the analysis.
- primary_equipmentEquipment
The equipment used in the analysis.
- format{‘json’, ‘yaml’}
The format to write the file in.
- attachmentslist of Attachment
Additional attachments to include in the QuAAC file.
- overwritebool
Whether to overwrite the file if it already exists.
- kwargs
Additional keyword arguments to pass to the Document instantiation.
- class pylinac.quart.HypersightQuartDVT(**kwargs)[source]¶
Bases:
QuartDVTA class for loading and analyzing CT DICOM files of a Quart phantom that comes with the Halcyon, specifically for the Hypersight version, which includes a water ROI. Analyzes: HU Uniformity, Image Scaling & HU Linearity.
Parameters¶
- folderpathstr, list of strings, or Path to folder
String that points to the CBCT image folder location.
- check_uidbool
Whether to enforce raising an error if more than one UID is found in the dataset.
- memory_efficient_modebool
Whether to use a memory efficient mode. If True, the DICOM stack will be loaded on demand rather than all at once. This will reduce the memory footprint but will be slower by ~25%. Default is False.
Raises¶
- NotADirectoryError
If folder str passed is not a valid directory.
- FileNotFoundError
If no CT images are found in the folder
- hu_module¶
alias of
HypersightQuartHUModule
- hu_module_class¶
alias of
HypersightQuartHUModule
- analyze(hu_tolerance: int | float = 40, scaling_tolerance: int | float = 1, thickness_tolerance: int | float = 0.2, cnr_threshold: int | float = 5, x_adjustment: float = 0, y_adjustment: float = 0, angle_adjustment: float = 0, roi_size_factor: float = 1, scaling_factor: float = 1, origin_slice: int | None = None, roll_slice_offset: float = -8)¶
Single-method full analysis of Quart DICOM files.
Parameters¶
- hu_toleranceint
The HU tolerance value for both HU uniformity and linearity.
- scaling_tolerancefloat, int
The scaling tolerance in mm of the geometric nodes on the HU linearity slice (CTP404 module).
- thickness_tolerancefloat, int
The tolerance of the thickness calculation in mm, based on the wire ramps in the CTP404 module.
Warning
Thickness accuracy degrades with image noise; i.e. low mAs images are less accurate.
- cnr_thresholdfloat, int
The threshold for “detecting” low-contrast image. See RTD for calculation info.
Deprecated since version 3.0: Use visibility parameter instead.
- x_adjustment: float
A fine-tuning adjustment to the detected x-coordinate of the phantom center. This will move the detected phantom position by this amount in the x-direction in mm. Positive values move the phantom to the right.
- y_adjustment: float
A fine-tuning adjustment to the detected y-coordinate of the phantom center. This will move the detected phantom position by this amount in the y-direction in mm. Positive values move the phantom down.
- angle_adjustment: float
A fine-tuning adjustment to the detected angle of the phantom. This will rotate the phantom by this amount in degrees. Positive values rotate the phantom clockwise.
- roi_size_factor: float
A fine-tuning adjustment to the ROI sizes of the phantom. This will scale the ROIs by this amount. Positive values increase the ROI sizes. In contrast to the scaling adjustment, this adjustment effectively makes the ROIs bigger or smaller, but does not adjust their position.
- scaling_factor: float
A fine-tuning adjustment to the detected magnification of the phantom. This will zoom the ROIs and phantom outline (if applicable) by this amount. In contrast to the roi size adjustment, the scaling adjustment effectively moves the phantom and ROIs closer or further from the phantom center. I.e. this zooms the outline and ROI positions, but not ROI size.
- origin_sliceint, None
The slice number of the HU linearity slice. If None, will be automatically determined. This is a fallback method in case the automatic method fails.
- roll_slice_offsetfloat
The offset in mm from
origin_sliceused to select the slice for phantom roll detection. The phantom roll is determined based on the two inserts in the central vertical axis of the HU module, but this detection can be influenced by the inserts used for slice thickness. Adjusting this offset to select a different slice can enhance the accuracy of phantom roll detection.
- property catphan_size: float¶
The expected size of the phantom in pixels, based on a 20cm wide phantom.
- clear_captured_warnings() None¶
Clear the list of captured warnings.
- find_origin_slice() int¶
Using a brute force search of the images, find the median HU linearity slice.
This method walks through all the images and takes a collapsed circle profile where the HU linearity ROIs are. If the profile contains both low (<800) and high (>800) HU values and most values are the same (i.e. it’s not an artifact), then it can be assumed it is an HU linearity slice. The median of all applicable slices is the center of the HU slice.
Returns¶
- int
The middle slice of the HU linearity module.
- find_phantom_axis()¶
We fit all the center locations of the phantom across all slices to a 1D poly function instead of finding them individually for robustness.
Normally, each slice would be evaluated individually, but the RadMachine jig gets in the way of detecting the HU module (🤦♂️). To work around that in a backwards-compatible way we instead look at all the slices and if the phantom was detected, capture the phantom center. ALL the centers are then fitted to a 1D poly function and passed to the individual slices. This way, even if one slice is messed up (such as because of the phantom jig), the poly function is robust to give the real center based on all the other properly-located positions on the other slices.
- find_phantom_roll(func: Callable | None = None) float¶
Determine the “roll” of the phantom.
This algorithm uses the two air bubbles in the HU slice and the resulting angle between them.
Parameters¶
- func
A callable to sort the air ROIs.
Returns¶
float : the angle of the phantom in degrees.
- classmethod from_demo_images()¶
Construct a CBCT object from the demo images.
- classmethod from_url(url: str, check_uid: bool = True)¶
Instantiate a CBCT object from a URL pointing to a .zip object.
Parameters¶
- urlstr
URL pointing to a zip archive of CBCT images.
- check_uidbool
Whether to enforce raising an error if more than one UID is found in the dataset.
- classmethod from_zip(zip_file: str | ZipFile | BinaryIO, check_uid: bool = True, memory_efficient_mode: bool = False)¶
Construct a CBCT object and pass the zip file.
Parameters¶
- zip_filestr, ZipFile
Path to the zip file or a ZipFile object.
- check_uidbool
Whether to enforce raising an error if more than one UID is found in the dataset.
- memory_efficient_modebool
Whether to use a memory efficient mode. If True, the DICOM stack will be loaded on demand rather than all at once. This will reduce the memory footprint but will be slower by ~25%. Default is False.
Raises¶
FileExistsError : If zip_file passed was not a legitimate zip file. FileNotFoundError : If no CT images are found in the folder
- geometry_module_class¶
alias of
QuartGeometryModule
- get_captured_warnings() list[dict]¶
Retrieve the list of captured warnings.
- localize(origin_slice: int | None) None¶
Find the slice number of the catphan’s HU linearity module and roll angle
- property mm_per_pixel: float¶
The millimeters per pixel of the DICOM images.
- property num_images: int¶
The number of images loaded.
- plot_analyzed_image(show: bool = True, **plt_kwargs) None¶
Plot the images used in the calculation and summary data.
Parameters¶
- showbool
Whether to plot the image or not.
- plt_kwargsdict
Keyword args passed to the plt.figure() method. Allows one to set things like figure size.
- plot_analyzed_subimage(*args, **kwargs) None¶
Plot a specific component of the CBCT analysis.
Parameters¶
- subimage{‘hu’, ‘un’, ‘sp’, ‘lc’, ‘mtf’, ‘lin’, ‘prof’, ‘side’}
The subcomponent to plot. Values must contain one of the following letter combinations. E.g.
linearity,linear, andlinwill all draw the HU linearity values.hudraws the HU linearity image.undraws the HU uniformity image.spdraws the Spatial Resolution image.lcdraws the Low Contrast image (if applicable).mtfdraws the RMTF plot.lindraws the HU linearity values. Used withdelta.profdraws the HU uniformity profiles.sidedraws the side view of the phantom with lines of the module locations.
- deltabool
Only for use with
lin. Whether to plot the HU delta or actual values.- showbool
Whether to actually show the plot.
- plot_images(show: bool = True, **plt_kwargs) dict[str, Figure]¶
Plot all the individual images separately.
Parameters¶
- show
Whether to show the images.
- plt_kwargs
Keywords to pass to matplotlib for figure customization.
- plot_side_view(axis: Axes) None¶
Plot a view of the scan from the side with lines showing detected module positions
- plotly_analyzed_images(show: bool = True, show_legend: bool = True, show_colorbar: bool = True, **kwargs) dict[str, Figure]¶
Plot the analyzed set of images to Plotly figures.
Parameters¶
- showbool
Whether to show the plot.
- show_colorbarbool
Whether to show the colorbar on the plot.
- show_legendbool
Whether to show the legend on the plot.
- kwargs
Additional keyword arguments to pass to the plot.
Returns¶
- dict
A dictionary of the Plotly figures where the key is the name of the image and the value is the figure.
- publish_pdf(filename: str | Path, notes: str | None = None, open_file: bool = False, metadata: dict | None = None, logo: Path | str | None = None) None¶
Publish (print) a PDF containing the analysis and quantitative results.
Parameters¶
- filename(str, file-like object}
The file to write the results to.
- notesstr, list of strings
Text; if str, prints single line. If list of strings, each list item is printed on its own line.
- open_filebool
Whether to open the file using the default program after creation.
- metadatadict
Extra data to be passed and shown in the PDF. The key and value will be shown with a colon. E.g. passing {‘Author’: ‘James’, ‘Unit’: ‘TrueBeam’} would result in text in the PDF like: ————– Author: James Unit: TrueBeam ————–
- logo: Path, str
A custom logo to use in the PDF report. If nothing is passed, the default pylinac logo is used.
- refine_origin_slice(initial_slice_num: int) int¶
Apply a refinement to the origin slice. This was added to handle the catphan 604 at least due to variations in the length of the HU plugs.
- results(as_str: bool = True) str | tuple[str, ...]¶
Return the results of the analysis as a string. Use with print().
- results_data(as_dict: bool = False, as_json: bool = False, by_alias: bool = False, exclude: set[str] | None = None) T | dict | str¶
Present the results data and metadata as a dataclass, dict, or tuple. The default return type is a dataclass.
Parameters¶
- as_dictbool
If True, return the results as a dictionary.
- as_jsonbool
If True, return the results as a JSON string. Cannot be True if as_dict is True.
- by_aliasbool
If True, use the alias names of the dataclass fields. These are generally the more human-readable names.
- excludeset
A set of fields to exclude from the results data.
- static run_demo(show: bool = True)¶
Run the Quart algorithm with a head dataset.
- save_analyzed_image(filename: str | Path | BinaryIO, **kwargs) None¶
Save the analyzed summary plot.
Parameters¶
- filenamestr, file object
The name of the file to save the image to.
- kwargs :
Any valid matplotlib kwargs.
- save_analyzed_subimage(filename: str | BinaryIO, subimage: str = 'hu', delta: bool = True, **kwargs) Figure | None¶
Save a component image to file.
Parameters¶
- filenamestr, file object
The file to write the image to.
- subimagestr
See
plot_analyzed_subimage()for parameter info.- deltabool
Only for use with
lin. Whether to plot the HU delta or actual values.
- save_images(directory: Path | str | None = None, to_stream: bool = False, **plt_kwargs) list[Path] | dict[str, BytesIO]¶
Save separate images to disk or stream.
Parameters¶
- directory
The directory to write the images to. If None, will use current working directory
- to_stream
Whether to write to stream or disk. If True, will return streams. Directory is ignored in that scenario.
- plt_kwargs
Keywords to pass to matplotlib for figure customization.
- to_quaac(path: str | Path, performer: User, primary_equipment: Equipment, format: Literal['json', 'yaml'] = 'yaml', attachments: list[Attachment] | None = None, overwrite: bool = False, **kwargs) None¶
Write an analysis to a QuAAC file. This will include the items from results_data() and the PDF report.
Parameters¶
- pathstr, Path
The file to write the results to.
- performerUser
The user who performed the analysis.
- primary_equipmentEquipment
The equipment used in the analysis.
- format{‘json’, ‘yaml’}
The format to write the file in.
- attachmentslist of Attachment
Additional attachments to include in the QuAAC file.
- overwritebool
Whether to overwrite the file if it already exists.
- kwargs
Additional keyword arguments to pass to the Document instantiation.
- uniformity_module_class¶
alias of
QuartUniformityModule
- class pylinac.quart.QuartHUModule(catphan, offset: int, hu_tolerance: float, thickness_tolerance: float, scaling_tolerance: float, clear_borders: bool = True, thickness_slice_straddle: str | int = 'auto', expected_hu_values: dict[str, float | int] | None = None)[source]¶
Bases:
CTP404CP504Parameters¶
catphan : ~pylinac.cbct.CatPhanBase instance. offset : int hu_tolerance : float thickness_tolerance : float scaling_tolerance : float clear_borders : bool
- property meas_slice_thickness: float¶
The average slice thickness for the 4 wire measurements in mm.
- property signal_to_noise: float¶
Calculate the SNR based on the suggested procedure in the manual: SNR = (HU + 1000) / sigma, where HU is the mean HU of a chosen insert and sigma is the stdev of the HU insert. We choose to use the Polystyrene as the target HU insert
- property contrast_to_noise: float¶
Calculate the CNR based on the suggested procedure in the manual: CNR = abs(HU_target - HU_background) / sigma, where HU_target is the mean HU of a chosen insert, HU_background is the mean HU of the background insert and sigma is the stdev of the HU background. We choose to use the Polystyrene as the target HU insert and Acrylic (base phantom material) as the background
- is_phantom_in_view() bool¶
Whether the phantom appears to be within the slice.
- property lcv: float¶
The low-contrast visibility
- property passed_geometry: bool¶
Returns whether all the line lengths were within tolerance.
- property passed_hu: bool¶
Boolean specifying whether all the ROIs passed within tolerance.
- property passed_thickness: bool¶
Whether the slice thickness was within tolerance from nominal.
- property phantom_roi: RegionProperties¶
Get the Scikit-Image ROI of the phantom
The image is analyzed to see if: 1) the CatPhan is even in the image (if there were any ROIs detected) 2) an ROI is within the size criteria of the catphan 3) the ROI area that is filled compared to the bounding box area is close to that of a circle
- plot(axis: Axes)¶
Plot the image along with ROIs to an axis
- plot_linearity(axis: Axes | None = None, plot_delta: bool = True) tuple¶
Plot the HU linearity values to an axis.
Parameters¶
- axisNone, matplotlib.Axes
The axis to plot the values on. If None, will create a new figure.
- plot_deltabool
Whether to plot the actual measured HU values (False), or the difference from nominal (True).
- plot_rois(axis: Axes) None¶
Plot the ROIs onto the image, as well as the background ROIs
- plotly(**kwargs) Figure¶
Plot the image along with the ROIs to a plotly figure.
- class pylinac.quart.QuartUniformityModule(catphan, tolerance: float | None = None, offset: int = 0, clear_borders: bool = True)[source]¶
Bases:
CTP486Class for analysis of the Uniformity slice of the CTP module. Measures 5 ROIs around the slice that should all be close to the same value.
Parameters¶
- catphan
CatPhanBaseinstance. The catphan instance.
- slice_numint
The slice number of the DICOM array desired. If None, will use the
slice_numproperty of subclass.- combinebool
If True, combines the slices +/-
num_slicesaround the slice of interest to improve signal/noise.- combine_method{‘mean’, ‘max’}
How to combine the slices if
combineis True.- num_slicesint
The number of slices on either side of the nominal slice to combine to improve signal/noise; only applicable if
combineis True.- clear_bordersbool
If True, clears the borders of the image to remove any ROIs that may be present.
- original_image
Imageor None The array of the slice. This is a bolt-on parameter for optimization. Leaving as None is fine, but can increase analysis speed if 1) this image is passed and 2) there is no combination of slices happening, which is most of the time.
- property avg_noise_power: float¶
The average noise power of the uniformity ROI.
- property integral_non_uniformity: float¶
The Integral Non-Uniformity. Elstrom et al equation 1. https://www.tandfonline.com/doi/pdf/10.3109/0284186X.2011.590525
- is_phantom_in_view() bool¶
Whether the phantom appears to be within the slice.
- property max_noise_power_frequency: float¶
The frequency of the maximum noise power. 0 means no pattern.
- property overall_passed: bool¶
Boolean specifying whether all the ROIs passed within tolerance.
- property phantom_roi: RegionProperties¶
Get the Scikit-Image ROI of the phantom
The image is analyzed to see if: 1) the CatPhan is even in the image (if there were any ROIs detected) 2) an ROI is within the size criteria of the catphan 3) the ROI area that is filled compared to the bounding box area is close to that of a circle
- plot(axis: Axes)¶
Plot the ROIs but also the noise power spectrum ROIs
- plot_profiles(axis: Axes | None = None) None¶
Plot the horizontal and vertical profiles of the Uniformity slice.
Parameters¶
- axisNone, matplotlib.Axes
The axis to plot on; if None, will create a new figure.
- plot_rois(axis: Axes) None¶
Plot the ROIs to the axis.
- plotly(**kwargs) Figure¶
Plot the image along with the ROIs to a plotly figure.
- property power_spectrum_1d: ndarray¶
The 1D power spectrum of the uniformity ROI.
- property power_spectrum_2d: ndarray¶
The power spectrum of the uniformity ROI.
- preprocess(catphan)¶
A preprocessing step before analyzing the CTP module.
Parameters¶
catphan : ~pylinac.cbct.CatPhanBase instance.
- property uniformity_index: float¶
The Uniformity Index. Elstrom et al equation 2. https://www.tandfonline.com/doi/pdf/10.3109/0284186X.2011.590525
- catphan
- class pylinac.quart.QuartGeometryModule(catphan, tolerance: float | None = None, offset: int = 0, clear_borders: bool = True)[source]¶
Bases:
CatPhanModuleClass for analysis of the Uniformity slice of the CTP module. Measures 5 ROIs around the slice that should all be close to the same value.
Parameters¶
- catphan
CatPhanBaseinstance. The catphan instance.
- slice_numint
The slice number of the DICOM array desired. If None, will use the
slice_numproperty of subclass.- combinebool
If True, combines the slices +/-
num_slicesaround the slice of interest to improve signal/noise.- combine_method{‘mean’, ‘max’}
How to combine the slices if
combineis True.- num_slicesint
The number of slices on either side of the nominal slice to combine to improve signal/noise; only applicable if
combineis True.- clear_bordersbool
If True, clears the borders of the image to remove any ROIs that may be present.
- original_image
Imageor None The array of the slice. This is a bolt-on parameter for optimization. Leaving as None is fine, but can increase analysis speed if 1) this image is passed and 2) there is no combination of slices happening, which is most of the time.
- high_contrast_resolutions() dict[source]¶
The distance in mm from the -700 HU index to the -200 HU index.
This calculates the distance on each edge of the horizontal and vertical geometric profiles for a total of 4 measurements. The result is the average of the 4 values. The DICOM data is already HU-corrected so -1000 => 0. This means we will search for 300 HU (-1000 + 700) and 800 HU (-1000 + 200) respectively.
This cuts the profile in half, searches for the highest-gradient index (where the phantom edge is), then further cuts it down to +/-10 pixels. The 300/800 HU are then found from linear interpolation. It was found that artifacts in the image could drastically influence these values, so hence the +/-10 subset.
Assumptions: -The phantom does not cross the halfway point of the image FOV (i.e. not offset by an obscene amount). -10 pixels about the phantom edge is adequate to capture the full dropoff. -300 and 800 HU values will be in the profile
- is_phantom_in_view() bool¶
Whether the phantom appears to be within the slice.
- property phantom_roi: RegionProperties¶
Get the Scikit-Image ROI of the phantom
The image is analyzed to see if: 1) the CatPhan is even in the image (if there were any ROIs detected) 2) an ROI is within the size criteria of the catphan 3) the ROI area that is filled compared to the bounding box area is close to that of a circle
- plot(axis: Axes)¶
Plot the image along with ROIs to an axis
- plotly(**kwargs) Figure¶
Plot the image along with the ROIs to a plotly figure.
- preprocess(catphan)¶
A preprocessing step before analyzing the CTP module.
Parameters¶
catphan : ~pylinac.cbct.CatPhanBase instance.
- roi_dist_mm¶
alias of
float
- roi_radius_mm¶
alias of
float
- catphan
- pydantic model pylinac.quart.QuartDVTResult[source]¶
Bases:
ResultBaseThis class should not be called directly. It is returned by the
results_data()method. It is a dataclass under the hood and thus comes with all the dunder magic.Use the following attributes as normal class attributes.
Create a new model by parsing and validating input data from keyword arguments.
Raises [ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.
self is explicitly positional-only to allow self as a field name.
- field phantom_model: str [Required]¶
The model of the phantom, e.g. ‘Quart DVT’.
- field phantom_roll_deg: float [Required]¶
The roll of the phantom in degrees.
- field origin_slice: int [Required]¶
The slice number of the origin image.
- field num_images: int [Required]¶
The number of images given in the dataset.
- field hu_module: QuartHUModuleOutput [Required]¶
The HU module output.
- field uniformity_module: QuartUniformityModuleOutput [Required]¶
The Uniformity module output.
- field geometric_module: QuartGeometryModuleOutput [Required]¶
The Geometric module output.
- pydantic model pylinac.quart.QuartHUModuleOutput[source]¶
Bases:
BaseModelThis class should not be called directly. It is returned by the
results_data()method. It is a dataclass under the hood and thus comes with all the dunder magic.Use the following attributes as normal class attributes.
Create a new model by parsing and validating input data from keyword arguments.
Raises [ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.
self is explicitly positional-only to allow self as a field name.
- field offset: int [Required]¶
The offset of the module slice in mm from the origin slice.
- field roi_settings: dict [Required]¶
A dictionary of the ROI settings.
- field rois: dict [Required]¶
A dictionary of ROI results.
- field measured_slice_thickness_mm: float [Required]¶
The measured slice thickness in mm.
- field signal_to_noise: float [Required]¶
The signal to noise ratio.
- field contrast_to_noise: float [Required]¶
The contrast to noise ratio.
- pydantic model pylinac.quart.QuartUniformityModuleOutput[source]¶
Bases:
BaseModelThis class should not be called directly. It is returned by the
results_data()method. It is a dataclass under the hood and thus comes with all the dunder magic.Use the following attributes as normal class attributes.
Create a new model by parsing and validating input data from keyword arguments.
Raises [ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.
self is explicitly positional-only to allow self as a field name.
- field offset: int [Required]¶
The offset of the module slice in mm from the origin slice.
- field roi_settings: dict [Required]¶
A dictionary of the ROI settings.
- field rois: dict [Required]¶
A dictionary of ROI results.
- field passed: bool [Required]¶
A boolean indicating if the module passed.
- pydantic model pylinac.quart.QuartGeometryModuleOutput[source]¶
Bases:
BaseModelThis class should not be called directly. It is returned by the
results_data()method. It is a dataclass under the hood and thus comes with all the dunder magic.Use the following attributes as normal class attributes.
Create a new model by parsing and validating input data from keyword arguments.
Raises [ValidationError][pydantic_core.ValidationError] if the input data cannot be validated to form a valid model.
self is explicitly positional-only to allow self as a field name.
- field offset: int [Required]¶
The offset of the module slice in mm from the origin slice.
- field roi_settings: dict [Required]¶
A dictionary of the ROI settings.
- field rois: dict [Required]¶
A dictionary of ROI results.
- field distances: dict [Required]¶
A dictionary of the phantom size itself in horizontal and vertical dimensions in mm.
- field high_contrast_distances: dict [Required]¶
A dictionary of the high contrast distances in mm. The key is the region of the line and the value is the distance in mm.
- field mean_high_contrast_distance: float [Required]¶
The mean of the high contrast distances in mm. Four edges are measured and averaged. The absolute distance from -700HU to -200HU is measured.