lazyslide.models.tile_prediction.PathProfilerQC#
- class PathProfilerQC(model_path=None, token=None)#
Bases:
TilePredictionModelGitHub Paper Params: 11.2M GPL-3.0 [Haghighat et al., 2022] Quality assessment of histology images
- predict(image)#
Predict the class of the input image using the PathProfiler model. The model expects a tensor of shape [B, C, H, W].
Suggested Name | Description |———————— | —————————————————————— |diagnostic_quality | Whether the image is usable for diagnosis (1 = good quality) |visual_cleanliness | Whether the image appears normal and free of artefacts (1 = clean) |focus_issue | Degree of focus issue (1 = severe, 0.5 = slight, 0 = none) |staining_issue | Degree of staining issue (1 = severe, 0.5 = slight, 0 = none) |tissue_folding_present | Whether tissue folding is present (1 = present) |misc_artifacts_present | Whether other artefacts are present (1 = present) |