LGHCQMMar 15, 2023

Interpretability from a new lens: Integrating Stratification and Domain knowledge for Biomedical Applications

arXiv:2303.09322v1h-index: 11
Originality Incremental advance
AI Analysis

This addresses the challenge of trust and adoption by domain experts in biomedical applications, though it appears incremental as it builds on existing IML frameworks.

The paper tackles the problem of model instability and lack of trust in interpretable machine learning (IML) for biomedical datasets by proposing a strategy that integrates stratification and domain knowledge, resulting in improved stability and trustworthiness of IML models.

The use of machine learning (ML) techniques in the biomedical field has become increasingly important, particularly with the large amounts of data generated by the aftermath of the COVID-19 pandemic. However, due to the complex nature of biomedical datasets and the use of black-box ML models, a lack of trust and adoption by domain experts can arise. In response, interpretable ML (IML) approaches have been developed, but the curse of dimensionality in biomedical datasets can lead to model instability. This paper proposes a novel computational strategy for the stratification of biomedical problem datasets into k-fold cross-validation (CVs) and integrating domain knowledge interpretation techniques embedded into the current state-of-the-art IML frameworks. This approach can improve model stability, establish trust, and provide explanations for outcomes generated by trained IML models. Specifically, the model outcome, such as aggregated feature weight importance, can be linked to further domain knowledge interpretations using techniques like pathway functional enrichment, drug targeting, and repurposing databases. Additionally, involving end-users and clinicians in focus group discussions before and after the choice of IML framework can help guide testable hypotheses, improve performance metrics, and build trustworthy and usable IML solutions in the biomedical field. Overall, this study highlights the potential of combining advanced computational techniques with domain knowledge interpretation to enhance the effectiveness of IML solutions in the context of complex biomedical datasets.

Foundations

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