Example #1
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def test_angle_diagonal():
    """
    Test diagonal points
    """

    p1 = (0, 0)
    p2 = (1, 1)

    assert angle(p1, p2) == 45
Example #2
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def test_angle_horizontal():
    """
    Test two horizontal points
    """

    p1 = (0, 0)
    p2 = (0, 1)

    assert angle(p1, p2) == 0
Example #3
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def test_angle_vertical_inverse():
    """
    Test second point below first point
    """

    p1 = (1, 0)
    p2 = (0, 0)

    assert angle(p1, p2) == 270
Example #4
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def test_angle_vertical():
    """
    Test two vertical points
    """

    p1 = (0, 0)
    p2 = (1, 0)

    assert angle(p1, p2) == 90
Example #5
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def test_angle_diagonal_inverse():
    """
    Test diagonal points, where second point is
    bottom left of first point
    """

    p1 = (0, 0)
    p2 = (-1, -1)

    assert angle(p1, p2) == 225
Example #6
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def test_angle_horizontal_inverse():
    """
    Test, where horizontal points down, where second point is
    left to first point
    """

    p1 = (0, 1)
    p2 = (0, 0)

    assert angle(p1, p2) == 180
Example #7
0
def spatial_colocalize(fileinfos, options: Options):
    """Performs spatial colocalization of the given files

    Arguments:
        fileinfos {iterable of ChannelInfo} -- [description]
        options {Options} -- [description]
    """

    assert _currentrun, "please call new_run before starting a analysis"

    data = list()

    for info in fileinfos:
        file, datafile, maskoutput, channelname = info
        _log("Loading file \"{0}\"".format(file))
        image = imread(file)
        dataimg = imread(datafile) if datafile else None

        data.append(
            # todo: turn into named touple?
            (image, dataimg, maskoutput, channelname))

    images = next(zip(*data))  # first element of each tuple is the image
    # these are not the final masks!
    masks = [image > options.threshold for image in images]

    connectivity = 2 if options.diagnoalconnectivity else 1
    labeled_masks = [
        skimage.measure.label(m, connectivity=connectivity) for m in masks
    ]

    overlapping_areas = (np.ones_like(masks[0]) == 1)  # Full true array

    for mask in masks:
        overlapping_areas = np.logical_and(overlapping_areas, mask)

    selection_masks = list()

    for index in range(0, len(masks)):
        ids = np.unique(labeled_masks[index][overlapping_areas])
        _log("{0} objects in \"{1}\"".format(len(ids), fileinfos[index][3]))

        selection_mask = np.in1d(labeled_masks[index],
                                 ids).reshape(images[index].shape)
        # selections masks selects features, that overlap with other features

        mask_filename = data[index][2]
        if mask_filename:  # third entry of the tuple contains a filename, if mask should be saved
            _log("Saving mask as {0}".format(mask_filename))
            save_binary_image(mask_filename, selection_mask)

        selection_masks.append(selection_mask)

    # selection mask labels
    mask_labels = [
        skimage.measure.label(mask, connectivity=connectivity)
        for mask in selection_masks
    ]

    if options.csvfolder:
        _log("Calculating statistics")
        os.makedirs(os.path.dirname(options.csvfolder), exist_ok=True)

        standard_csv_lines = list()
        overlap_csv_lines = list()

        for index in range(0, len(masks)):
            _log("Working on statistics from {0}".format(data[index][3]))

            current_labels = mask_labels[index]
            regionprops = skimage.measure.regionprops(
                current_labels, intensity_image=data[index][1], cache=False)

            for region in regionprops:
                csvrow = dict()

                csvrow["channel"] = fileinfos[index][3]
                csvrow["object_id"] = region.label
                csvrow["sourcefile"] = fileinfos[index][0]

                if "area_px" in options.statistics:
                    #_log("Calculating particle areas")
                    csvrow["area_px"] = region.area

                if "intensity_mean" in options.statistics:
                    #_log("Calculating intensity avg")
                    try:
                        csvrow["intensity_mean"] = region.mean_intensity
                    except AttributeError:
                        _log(
                            "Trying to calculate intensity without data file!")
                        csvrow["intensity_mean"] = "No data image specified!"

                if "intensity_max" in options.statistics:
                    #_log("Calculating intensity max")
                    try:
                        csvrow["intensity_min"] = region.min_intensity
                        csvrow["intensity_max"] = region.max_intensity
                    except AttributeError:
                        _log(
                            "Trying to calculate intensity without data file!")
                        csvrow["intensity_min"] = "No data image specified!"
                        csvrow["intensity_max"] = "No data image specified!"

                if "com" in options.statistics:
                    csvrow["com_unweighted"] = region.centroid
                    csvrow["com_unweighted_local"] = region.local_centroid
                    try:
                        csvrow["com_weighted"] = region.weighted_centroid
                        csvrow[
                            "com_weighted_local"] = region.weighted_local_centroid
                    except AttributeError:
                        pass  # no data file specified

                if "area_overlap_px" in options.statistics:
                    # Area overlapping in all channels
                    minimal_overlapping_area = 0

                    # todo: filter reverse overlaps
                    for comparisonchannel in [
                            i for i in range(0, len(masks)) if i != index
                    ]:
                        own_id = region.label
                        own_selection = mask_labels[index] == own_id

                        comparison_ids = np.array(
                            labeled_masks[comparisonchannel])

                        print(comparison_ids)

                        comparison_ids[np.logical_not(own_selection)] = 0

                        # comparison_ids now contains ids present in both channels
                        ids_to_select = np.unique(comparison_ids)

                        # now create the final label mask, since the above solution cuts of
                        # areas not in both channels!

                        comparison_label_mask = np.in1d(
                            labeled_masks[comparisonchannel],
                            ids_to_select).reshape(images[index].shape)

                        comparison_labels = np.array(
                            labeled_masks[comparisonchannel])
                        comparison_labels[np.logical_not(
                            comparison_label_mask)] = 0

                        if DEBUG:
                            print(comparison_labels)

                        # todo: implement data image
                        overlappingregions = None

                        if data[comparisonchannel][1]:
                            overlappingregions = skimage.measure.regionprops(
                                comparison_labels,
                                intensity_image=data[comparisonchannel][1],
                                cache=False)
                        else:
                            overlappingregions = skimage.measure.regionprops(
                                comparison_labels, cache=False)

                        cumulative_overlap = 0

                        if DEBUG:
                            print("Comparing")
                            print(comparison_label_mask)

                        minimal_overlapping_area = np.logical_and(
                            comparison_label_mask, overlapping_areas)
                        minimal_overlapping_size = np.count_nonzero(
                            minimal_overlapping_area)

                        for overlap in overlappingregions:
                            detailedoverlapcsvrow = dict()

                            detailedoverlapcsvrow["source_channel"] = data[
                                index][3]
                            detailedoverlapcsvrow["source_id"] = region.label
                            detailedoverlapcsvrow["comparison_channel"] = data[
                                comparisonchannel][3]
                            detailedoverlapcsvrow[
                                "comparison_id"] = overlap.label
                            detailedoverlapcsvrow[
                                "area_in_both_channels"] = overlap.area

                            # calculate distances
                            distance_unweighted = distance(
                                region.centroid, overlap.centroid)
                            angle_unweighted = angle(region.centroid,
                                                     overlap.centroid)

                            distance_weighted = "No data file specified"
                            angle_weighted = "No data file specified"

                            detailedoverlapcsvrow[
                                "distance_unweighted"] = distance_unweighted
                            detailedoverlapcsvrow[
                                "angle_unweighted"] = angle_unweighted

                            try:
                                distance_weighted = distance(
                                    region.weighted_centroid,
                                    overlap.weighted_centroid)
                                angle_weighted = angle(
                                    region.weighted_centroid,
                                    overlap.weighted_centroid)
                            except AttributeError:
                                pass

                            detailedoverlapcsvrow[
                                "distance_weighted"] = distance_weighted
                            detailedoverlapcsvrow[
                                "angle_weighted"] = angle_weighted

                            cumulative_overlap += overlap.area
                            overlap_csv_lines.append(detailedoverlapcsvrow)

                        csvrow["cumulative_overlap_{0}_{1}".format(
                            data[index][3],
                            data[comparisonchannel][3])] = cumulative_overlap

                    csvrow[
                        "minimum_overlapping_area"] = minimal_overlapping_size
                standard_csv_lines.append(csvrow)

        # finally: save csv data
        standardfile = os.path.join(
            options.csvfolder,
            "statistics_{0:%Y-%m-%d %H-%M-%S}.csv".format(_currentrun))
        overlapfile = os.path.join(
            options.csvfolder,
            "overlaps_{0:%Y-%m-%d %H-%M-%S}.csv".format(_currentrun))

        _writestats(standardfile, standard_csv_lines)
        _writestats(overlapfile, overlap_csv_lines)