def test_validate_sliceincrement(self): validate_sliceincrement( sort_dicoms(read_dicom_directory(test_data.GE_ANATOMICAL))) self.assertRaises( ConversionValidationError, validate_sliceincrement, sort_dicoms(read_dicom_directory( test_data.FAILING_SLICEINCREMENT)))
def dicom_to_nifti(dicom_input, output_file): """ This function will convert an anatomical dicom series to a nifti Examples: See unit test :param output_file: filepath to the output nifti :param dicom_input: directory with the dicom files for a single scan, or list of read in dicoms """ if len(dicom_input) <= 0: raise ConversionError('NO_DICOM_FILES_FOUND') # remove duplicate slices based on position and data dicom_input = _remove_duplicate_slices(dicom_input) # remove localizers based on image type dicom_input = _remove_localizers_by_imagetype(dicom_input) if settings.validate_slicecount: # remove_localizers based on image orientation (only valid if slicecount is validated) dicom_input = _remove_localizers_by_orientation(dicom_input) # validate all the dicom files for correct orientations common.validate_slicecount(dicom_input) if settings.validate_orientation: # validate that all slices have the same orientation common.validate_orientation(dicom_input) if settings.validate_orthogonal: # validate that we have an orthogonal image (to detect gantry tilting etc) common.validate_orthogonal(dicom_input) # sort the dicoms dicom_input = common.sort_dicoms(dicom_input) if settings.validate_sliceincrement: # validate that all slices have a consistent slice increment common.validate_sliceincrement(dicom_input) # Get data; originally z,y,x, transposed to x,y,z data = common.get_volume_pixeldata(dicom_input) affine = common.create_affine(dicom_input) # Convert to nifti nii_image = nibabel.Nifti1Image(data, affine) # Set TR and TE if available if Tag(0x0018, 0x0081) in dicom_input[0] and Tag(0x0018, 0x0081) in dicom_input[0]: common.set_tr_te(nii_image, float(dicom_input[0].RepetitionTime), float(dicom_input[0].EchoTime)) # Save to disk if output_file is not None: logger.info('Saving nifti to disk %s' % output_file) nii_image.to_filename(output_file) return {'NII_FILE': output_file, 'NII': nii_image}