Integration of Radiomics and Tumor Biomarkers in Interpretable Machine Learning Models
Lennart Brocki, Neo Christopher Chung

TL;DR
This paper introduces ConRad, an interpretable machine learning model that integrates radiomics and predicted tumor biomarkers for lung cancer CT analysis, outperforming black-box CNNs while maintaining interpretability.
Contribution
The study proposes a novel interpretable classifier combining radiomics and concept bottleneck predicted biomarkers, eliminating the need for labor-intensive biomarker measurement.
Findings
ConRad with non-linear SVM and Lasso outperforms CNNs in accuracy.
Lasso feature selection reduces model complexity and improves performance.
Interpretability is maintained without sacrificing classification accuracy.
Abstract
Despite the unprecedented performance of deep neural networks (DNNs) in computer vision, their practical application in the diagnosis and prognosis of cancer using medical imaging has been limited. One of the critical challenges for integrating diagnostic DNNs into radiological and oncological applications is their lack of interpretability, preventing clinicians from understanding the model predictions. Therefore, we study and propose the integration of expert-derived radiomics and DNN-predicted biomarkers in interpretable classifiers which we call ConRad, for computerized tomography (CT) scans of lung cancer. Importantly, the tumor biomarkers are predicted from a concept bottleneck model (CBM) such that once trained, our ConRad models do not require labor-intensive and time-consuming biomarkers. In our evaluation and practical application, the only input to ConRad is a segmented CT…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · AI in cancer detection
MethodsSupport Vector Machine · Logistic Regression
