IVCVLGApr 4, 2021

Towards Semantic Interpretation of Thoracic Disease and COVID-19 Diagnosis Models

arXiv:2104.02481v213 citations
AI Analysis

This work addresses the interpretability problem for medical AI practitioners, but it is incremental as it builds on existing saliency methods.

The authors tackled the lack of semantic interpretation in thoracic disease and COVID-19 diagnosis models by identifying semantics in internal network units and proposing semantic attribution for predictions, using publicly available datasets like CheXpert and BrixIA.

Convolutional neural networks are showing promise in the automatic diagnosis of thoracic pathologies on chest x-rays. Their black-box nature has sparked many recent works to explain the prediction via input feature attribution methods (aka saliency methods). However, input feature attribution methods merely identify the importance of input regions for the prediction and lack semantic interpretation of model behavior. In this work, we first identify the semantics associated with internal units (feature maps) of the network. We proceed to investigate the following questions; Does a regression model that is only trained with COVID-19 severity scores implicitly learn visual patterns associated with thoracic pathologies? Does a network that is trained on weakly labeled data (e.g. healthy, unhealthy) implicitly learn pathologies? Moreover, we investigate the effect of pretraining and data imbalance on the interpretability of learned features. In addition to the analysis, we propose semantic attribution to semantically explain each prediction. We present our findings using publicly available chest pathologies (CheXpert, NIH ChestX-ray8) and COVID-19 datasets (BrixIA, and COVID-19 chest X-ray segmentation dataset). The Code is publicly available.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes