def parse_xml_file(file):
    # Create an XML Tree, use own method to remove namespaces
    root = xmlHelper.create_xml_tree(file)

    # IPython.embed()

    # Find the Study and Series IDs if possible
    study_uid = xmlHelper.get_study_uid(root)
    series_uid = xmlHelper.get_series_uid(root)
    print("Parsing %s" % file)
    print("Get study_uid %s and series_uid %s" % (study_uid, series_uid))
    if study_uid is None:
        write_error("Failed to find Study UID: " + file)
        return

    # Find the DICOMS matching the study and series ID.
    # Assuming that all DICOMS to a study/series ID are in one folder.
    dicom_path, no_of_dicoms = get_dicom_from_study_uid(study_uid, series_uid)
    if no_of_dicoms < 10:
        print(dicom_path)
        print("No DICOM's found for file:", file)
        return
    print(dicom_path)
    # IPython.embed()
    # Files are saved in a folder with the structure $PatientID/$StudyID/$SeriesID/$DicomName
    # Removing StudyID, SeriesID and DICOM-Name gives a patient ID --> StudyUID
    # long_patient_id=os.path.basename(os.path.dirname(os.path.dirname(os.path.dirname(dicom_path))))
    patient_id = study_uid

    # For some patients, more than one scan is provided (for example due to multiple
    # time points). To ensure that each time point is only scanned one, an appendix
    # is added to the patient_id, ensuring that multiple time points can be selected.
    # for appendix in list_of_appendix:
    #     target_path = os.path.join(path_to_nrrds, patient_id+appendix)
    #     if not os.path.exists(target_path):
    appendix = file[-5]
    patient_id = patient_id + appendix
    print(patient_id)
    # break

    # Create Nrrd files from DICOMS and reading spacing and orgiin.
    nrrd_file = create_nrrd_from_dicoms(dicom_path, patient_id)
    spacing, origin = get_spacing_and_origin(nrrd_file)

    # Creating multiple planar figures for each reading session.
    # Each session represents the result of an different expert
    # Each session gets an session ID that is unique for the given patient ID
    # Same session ids for differnt patients do not necessarily correspond to the same expert.
    print("Creating Planar Figure")
    session_id = 0
    for session in root.iter('readingSession'):
        create_planarfigure_for_session(session, spacing, origin, patient_id,
                                        session_id)
        session_id = session_id + 1
    convert_planar_figures_to_masks(nrrd_file, patient_id)
    print("Merging Planar Figures")
    merge_planar_figures_per_nodule(nrrd_file, patient_id)
示例#2
0
def parse_xml_file(file):
    # Create an XML Tree, use own method to remove namespaces 
    root=xmlHelper.create_xml_tree(file)
    
    # IPython.embed()

    # Find the Study and Series IDs if possible
    study_uid=xmlHelper.get_study_uid(root)
    series_uid=xmlHelper.get_series_uid(root)
    print("Parsing %s" % file)
    print("Get study_uid %s and series_uid %s" % (study_uid, series_uid))
    if study_uid is None:
        write_error("Failed to find Study UID: " + file)
        return
    
    # Find the DICOMS matching the study and series ID. 
    # Assuming that all DICOMS to a study/series ID are in one folder. 
    dicom_path, no_of_dicoms=get_dicom_from_study_uid(study_uid, series_uid)
    if no_of_dicoms < 10:
        print(dicom_path)
        print("No DICOM's found for file:",file)
        return
    print(dicom_path)
    # IPython.embed()
    # Files are saved in a folder with the structure $PatientID/$StudyID/$SeriesID/$DicomName
    # Removing StudyID, SeriesID and DICOM-Name gives a patient ID --> StudyUID
    # long_patient_id=os.path.basename(os.path.dirname(os.path.dirname(os.path.dirname(dicom_path))))
    patient_id=study_uid
    
    # For some patients, more than one scan is provided (for example due to multiple
    # time points). To ensure that each time point is only scanned one, an appendix
    # is added to the patient_id, ensuring that multiple time points can be selected. 
    # for appendix in list_of_appendix:
    #     target_path = os.path.join(path_to_nrrds, patient_id+appendix)
    #     if not os.path.exists(target_path):
    appendix=file[-5]
    patient_id =patient_id+appendix
    print(patient_id)
            # break
    
    # Create Nrrd files from DICOMS and reading spacing and orgiin. 
    nrrd_file=create_nrrd_from_dicoms(dicom_path, patient_id)