EndoNet: model for automatic calculation of H-score on histological slides
This work addresses the efficiency and accuracy limitations in pathologists' workflows for histological analysis, representing an incremental improvement in computer-aided methods.
The authors tackled the problem of automating the time-consuming and error-prone H-score calculation for protein assessment in histological slides by developing EndoNet, a neural network model that achieved 0.77 mAP on a test dataset of 1780 annotated tiles.
H-score is a semi-quantitative method used to assess the presence and distribution of proteins in tissue samples by combining the intensity of staining and percentage of stained nuclei. It is widely used but time-consuming and can be limited in accuracy and precision. Computer-aided methods may help overcome these limitations and improve the efficiency of pathologists' workflows. In this work, we developed a model EndoNet for automatic calculation of H-score on histological slides. Our proposed method uses neural networks and consists of two main parts. The first is a detection model which predicts keypoints of centers of nuclei. The second is a H-score module which calculates the value of the H-score using mean pixel values of predicted keypoints. Our model was trained and validated on 1780 annotated tiles with a shape of 100x100 $μm$ and performed 0.77 mAP on a test dataset. Moreover, the model can be adjusted to a specific specialist or whole laboratory to reproduce the manner of calculating the H-score. Thus, EndoNet is effective and robust in the analysis of histology slides, which can improve and significantly accelerate the work of pathologists.