Deep Multi-path Network Integrating Incomplete Biomarker and Chest CT Data for Evaluating Lung Cancer Risk
Riqiang Gao, Yucheng Tang, Kaiwen Xu, Michael N. Kammer, Sanja L., Antic, Steve Deppen, Kim L. Sandler, Pierre P. Massion, Yuankai Huo, Bennett, A. Landman

TL;DR
This paper introduces M3Net, a multi-path neural network that effectively integrates incomplete clinical, biomarker, and CT data to improve lung cancer risk prediction, handling missing modalities with high accuracy.
Contribution
The paper presents a novel multi-path neural network architecture, M3Net, capable of integrating multi-modal data with missing information for lung cancer risk assessment.
Findings
Combining multiple data modalities improves prediction accuracy.
M3Net outperforms single modality models in both cross-validation and external validation.
The model effectively handles missing data in clinical and imaging features.
Abstract
Clinical data elements (CDEs) (e.g., age, smoking history), blood markers and chest computed tomography (CT) structural features have been regarded as effective means for assessing lung cancer risk. These independent variables can provide complementary information and we hypothesize that combining them will improve the prediction accuracy. In practice, not all patients have all these variables available. In this paper, we propose a new network design, termed as multi-path multi-modal missing network (M3Net), to integrate the multi-modal data (i.e., CDEs, biomarker and CT image) considering missing modality with multiple paths neural network. Each path learns discriminative features of one modality, and different modalities are fused in a second stage for an integrated prediction. The network can be trained end-to-end with both medical image features and CDEs/biomarkers, or make a…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
