Beispiel #1
0
class ScanimageIO(object):
    session_name = 'main'
    r_value = 0.7

    def __init__(self, path):
        # wself.path = Path(str(path) + '.imported')
        if '.imported' in str(path):
            self.path = Path(path)
        else:
            self.path = Path(str(path) + '.imported')

    @classmethod
    def get_record(cls, rec_path):
        return ScanimageRecord(rec_path)

    @property
    def exists(self):
        return self.path.is_dir()

    @memoized_property
    def tiff(self):
        tiffpath = self.path.with_suffix('.tif')
        print 'Import from {}...Please allow a few minutes.'.format(
            tiffpath.name)
        return tifffile.imread(tiffpath.str)

    def import_raw(self):
        if self.exists:
            return False
        nchan = util.infer_nchannels(self.tiff)
        if nchan:
            self.create_package_path()
            self.convert_channels(nchan)
        else:
            print 'Unable to import data.'
        print 'Import done!'
        return self.toDict()

    def create_package_path(self):
        self.path.mkdir()
        print 'Path `{}` created.'.format(self.path.str)

    def remove_package(self):
        shutil.rmtree(self.path.str)
        return self.toDict()

    def convert_channels(self, nchan):
        for index in range(nchan):
            self.convert_channel(nchan, index)

    def convert_channel(self, nchan, chan):
        tiff = self.tiff[chan::nchan]
        print 'Converting channel {}...({} frames.)'.format(chan, len(tiff))
        return getattr(self, 'ch{}'.format(chan)).import_raw(tiff)

    def toDict(self):
        return dict(exists=self.exists,
                    path=self.path.str,
                    sessions=self.sessions)

    @memoized_property
    def ch0(self):
        return ScanimageChannel(self.path.joinpath('ch0'))

    @memoized_property
    def ch1(self):
        return ScanimageChannel(self.path.joinpath('ch1'))

    @memoized_property
    def channel(self):
        chan = self.session.opt.setdefault('channel', 0)
        return getattr(self, 'ch{}'.format(chan))

    @channel.invalidator
    def set_channel(self, channel):
        self.session.opt['channel'] = channel
        return self

    @property
    def nchannel(self):
        return len(list(self.path.glob('ch?.mmap.npy')))

    @property
    def channel_numbers(self):
        return list(range(self.nchannel))

    @property
    def channel_number(self):
        return self.session.opt['channel']

    colormap_index = 0
    colormaps = ['jet', 'gray', 'gist_heat', 'afmhot', 'bone']

    @property
    def has_blank_and_flicker(self):
        if self.db:
            rec = self.db.rec
            return [rec.blankOn, rec.flickerOn]
        else:
            return [None, None]

    @property
    def sfrequency(self):
        return self.db.locator.sfrequencies.current if self.db else ''
        # return self.session.opt.setdefault(#  'sfrequency', )
    @property
    def sfrequency_index(self):
        return self.sfrequencies.index(
            self.sfrequency) if self.sfrequency else 0

    @property
    def sfrequencies(self):
        return self.db.locator.sfrequencies if self.db else []

    @property
    def orientations(self):
        return self.db.orientations if self.db else []

    # @sfrequency.invalidator
    def set_sfrequency_index(self, sfreq_index):
        self.sfrequencies.set_cursor(sfreq_index)
        self.session.opt['sfrequency'] = self.sfrequencies.current
        self.session.opt.save()
        return dict(index=sfreq_index, value=self.sfrequency)

    @memoized_property
    def db(self):
        return ScanimageDBAdaptor(self.session.ed) if self.session.ed else None

    @property
    def main_response(self):
        return MainResponse.from_adaptor(self.channel.stat.MEAN, self.db)

    @property
    def sessions(self):
        return map(ScanimageSession, sorted(self.path.ls('*.session')))

    @memoized_property
    def session(self):
        return ScanimageSession(
            self.path.joinpath(self.session_name).with_suffix('.session'))

    @session.invalidator
    def set_session(self, session_name):
        self.session_name = session_name
        return self

    def upsert_roi(self, roi_kwargs):
        gp = validate_guess_params(roi_kwargs.pop('guessParams', {}))
        return self.session.roi.upsert(ROI(guess_params=gp, **roi_kwargs))

    def invalidate_rois(self):
        for roi in self.session.roi.values():
            roi.invalidated = True
            roi.blank = None
            roi.flicker = None
            roi.responses = {}

    def export_sfreqfit_data_as_mat(self, rid):
        roi = self.session.roi[rid]
        sio = StringIO()
        value = roi.sfreqfit.toDict()
        io.savemat(sio, value)
        return sio.getvalue()

    def update_responses(self, id, heavy=False):
        roi = self.session.roi[id]
        trace = self.make_trace(roi)
        if self.session.ed:
            with self.session.roi.bulk_on:
                try:
                    if self.db.locator.override_blank(True):
                        roi.blank = Orientation.from_adaptor(
                            'blank', trace, self.db)
                    if self.db.locator.override_flicker(True):
                        roi.flicker = Orientation.from_adaptor(
                            'flicker', trace, self.db)
                finally:
                    self.db.locator.override()
                for sf in self.db.locator.sfrequencies.loop():
                    response = ROIResponse.from_adaptor(roi, trace, self.db)
                    roi.responses[self.sfrequency] = response
                roi.update_with_adaptor(self.db)
                for sf, resp in roi.sorted_responses:
                    gp = roi.guess_params.get(sf) or resp.sog_initial_guess
                    print 'SoG custom guess for {}: {}'.format(sf, gp)
                    resp.update_fit_and_decay(roi, self.db, gp, heavy)
                p_value = roi.anova_all.get('p')
                if heavy:
                    if p_value < 0.01:
                        print('Computing bootstrap for preferred SF')
                        #     '{} conditions...').format(
                        #     len(self.db.orientations) * len(self.db.sfrequencies))
                        roi.update_bootstrap_for_sf(self.db)
                        peaksf = roi.sfreqfit.peak_sfreq.x
                        peak_resp = roi.responses[peaksf]
                        print 'Determine peak spatial frequency: {}'.format(
                            peaksf)
                        peak_resp.bootstrap = BootstrapResponse.from_adaptor(
                            peak_resp, self.db)
                    else:
                        print(
                            'P value is not less than 0.01. ({}) '
                            'Skip bootstrap.').format(p_value)

                roi.invalidated = False
                print 'Done updating response for ROI ' + str(roi.id)
                print ' '
                print ' '
                return self.session.roi.upsert(roi)
        else:
            response = ROIResponse.from_scanbox(roi, trace)
            roi.responses[self.sfrequency] = response
            roi.update_with_adaptor(self.db)
            roi.invalidated = False
            return self.session.roi.upsert(roi)

    sog_initial_guess = ((0, 1), (0, 1), (15, 60), (0, 0.01))

    def make_delta_trace(self, roi, trace, dx=0, dy=0):
        extras = self.session.roi.values()
        extras.remove(roi)
        main_trace, main_mask = roi.trace(trace, dx, dy)
        neur_trace, neur_mask = roi.neuropil_trace(trace, extras, dx, dy)
        return main_trace - neur_trace * self.r_value

    def make_trace(self, roi, old=False):  # checked same function
        if old:
            # print 'no centroid yet...perform old'
            extras = self.session.roi.values()
            extras.remove(roi)
            main_trace, main_mask = roi.trace(self.channel.mmap)
            neur_trace, neur_mask = roi.neuropil_trace(self.channel.mmap,
                                                       extras)
            # neuropil_mask, roi_mask = roi.trim_bounding_mask(neur_mask, main_mask)
            # roi.masks = dict(
            #     neuripil = neuropil_mask.tolist(),
            #     roi = roi_mask.tolist())
            return main_trace - neur_trace * self.r_value
        else:
            # print 'has centroid...perform new'
            vecs = roi.split_by_vectors(len(self.channel.mmap))
            traces = np.split(self.channel.mmap, vecs.index[1:])
            return np.concatenate([
                self.make_delta_trace(roi, trace, dx, dy)
                for dx, dy, trace in zip(vecs.x, vecs.y, traces)
            ])

    def export_plots(self, id):
        roi = self.session.roi[id]
        return roi.export_plots_as_zip_for_download()
Beispiel #2
0
class TrajectoryIO(object):
    session_name = 'main'

    def __init__(self, path):
        self.path = Path(path).merge_or_join_suffix('.imported', on='.tif')

    @property
    def exists(self):
        return self.path.is_dir()

    @property
    def as_record(self):
        return dict(name=self.tiffpath.name,
                    user='******',
                    time=self.datetime.strftime('%H:%M:%S'),
                    host='IOS',
                    desc=self.desc,
                    mouse='Mouse 3',
                    package=self)

    @property
    def desc(self):
        return '{}'.format(tifffile.format_size(self.tiffpath.stat().st_size))

    @property
    def datetime(self):
        return datetime.fromtimestamp(float(self.tiffpath.stem))

    @property
    def tiffpath(self):
        return self.path.with_suffix('.tif')

    def toDict(self):
        return dict(exists=self.exists,
                    path=self.path.str,
                    sessions=self.sessions)

    @memoized_property
    def tiff(self):
        tiffpath = self.path.with_suffix('.tif')
        file_size = tiffpath.lstat().st_size
        print 'Import from {}...'.format(tiffpath)
        print 'File size {:,} bytes.'.format(file_size)
        return tifffile.imread(tiffpath.str)

    def import_raw(self):
        if self.exists:
            return False
        self.create_package_path()
        print 'Looking for matching VR log file...'
        log = TrajectoryLog.query(self.datetime)
        # it can fail but never reports.
        print 'Converting channel and timestamps...'
        tss = np.fromfile(self.path.with_suffix('.csv').str,
                          sep='\n',
                          dtype='float64')
        TrajectoryChannel(self.path.joinpath('channel')).import_raw(
            self.tiff, tss, log)
        print 'Import done!'
        return self.toDict()

    def create_package_path(self):
        self.path.mkdir()
        print 'Path `{}` created.'.format(self.path.str)

    def remove_package(self):
        shutil.rmtree(self.path.str)
        return self.toDict()

    @memoized_property
    def channel(self):
        tfilter = self.session.opt.get('filter')
        if tfilter:
            if tfilter._indices is not None:
                return TrajectoryChannel(
                    self.path.joinpath('channel')).set_indices(
                        tfilter._indices)
        return TrajectoryChannel(self.path.joinpath('channel'))

    @property
    def sessions(self):
        return map(TrajectorySession, sorted(self.path.ls('*.session')))

    @memoized_property
    def session(self):
        return TrajectorySession(
            self.path.joinpath(self.session_name).with_suffix('.session'))

    @session.invalidator
    def set_session(self, session_name):
        self.session_name = session_name
        return self

    @memoized_property
    def alog(self):  # aligned log in JSON format
        return [
            dict(e=e, x=x, y=y, v=v)
            for e, x, y, v in self.channel.alog[['E', 'X', 'Y', 'V']]
        ]

    @property
    def main_response(self):
        return TrajectoryResponse(self.channel.stat.MEAN)

    def upsert_roi(self, roi_kwargs):
        return self.session.roi.upsert(ROI(**roi_kwargs))

    def upsert_filter(self, filter_kwargs):
        tfilter = TrajectoryFilter(**filter_kwargs)
        tfilter._indices = tfilter.make_indices(self.channel.original_velocity)
        rv = self.session.opt.upsert(tfilter)
        for roi in self.session.roi.values():
            roi.invalidated = True
        self.session.roi.save()
        return rv

    def make_response(self, id):
        roi = self.session.roi[id]
        extras = self.session.roi.values()
        extras.remove(roi)
        main_trace, main_mask = roi.trace(self.channel.mmap)
        neur_trace, neur_mask = roi.neuropil_trace(self.channel.mmap, extras)
        trace = main_trace - neur_trace * 0.7
        roi.invalidated = False
        roi.response = TrajectoryResponse(trace)
        return self.session.roi.upsert(roi)

    @memoized_property
    def velocity_stat(self):
        return dict(
            max=self.channel.alog.V.max(),
            mean=self.channel.alog.V.mean(),
            min=self.channel.alog.V.min(),
        )