AutoCancer as an automated multimodal framework for early cancer detection
Current studies in early cancer detection based on liquid biopsy data often rely on off-the-shelf models and face challenges with heterogeneous data, as well as manually designed data preprocessing pipelines with different parameter settings. To address those challenges, we present AutoCancer, an au...
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Veröffentlicht in: | iScience 2024-07, Vol.27 (7), p.110183, Article 110183 |
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Sprache: | eng |
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Zusammenfassung: | Current studies in early cancer detection based on liquid biopsy data often rely on off-the-shelf models and face challenges with heterogeneous data, as well as manually designed data preprocessing pipelines with different parameter settings. To address those challenges, we present AutoCancer, an automated, multimodal, and interpretable transformer-based framework. This framework integrates feature selection, neural architecture search, and hyperparameter optimization into a unified optimization problem with Bayesian optimization. Comprehensive experiments demonstrate that AutoCancer achieves accurate performance in specific cancer types and pan-cancer analysis, outperforming existing methods across three cohorts. We further demonstrated the interpretability of AutoCancer by identifying key gene mutations associated with non-small cell lung cancer to pinpoint crucial factors at different stages and subtypes. The robustness of AutoCancer, coupled with its strong interpretability, underscores its potential for clinical applications in early cancer detection.
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•An automated, multimodal, and interpretable framework for early cancer detection•Unify feature selection, neural architecture search, and hyperparameter optimization•Evaluated in both specific cancer types and pan-cancer analysis•Identifying key gene mutations associated with different cancer stages and subtypes
Health sciences; Cancer systems biology; Cancer; Computing methodology; Machine learning |
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ISSN: | 2589-0042 2589-0042 |
DOI: | 10.1016/j.isci.2024.110183 |