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A Classification Benchmark for Artificial Intelligence Detection of Laryngeal Cancer from Patient Voice

A Classification Benchmark for Artificial Intelligence Detection of Laryngeal Cancer from Patient Voice

来源:Arxiv_logoArxiv
英文摘要

Cases of laryngeal cancer are predicted to rise significantly in the coming years. Current diagnostic pathways are inefficient, putting undue stress on both patients and the medical system. Artificial intelligence offers a promising solution by enabling non-invasive detection of laryngeal cancer from patient voice, which could help prioritise referrals more effectively. A major barrier in this field is the lack of reproducible methods. Our work addresses this challenge by introducing a benchmark suite comprising 36 models trained and evaluated on open-source datasets. These models classify patients with benign and malignant voice pathologies. All models are accessible in a public repository, providing a foundation for future research. We evaluate three algorithms and three audio feature sets, including both audio-only inputs and multimodal inputs incorporating demographic and symptom data. Our best model achieves a balanced accuracy of 83.7%, sensitivity of 84.0%, specificity of 83.3%, and AUROC of 91.8%.

Mary Paterson、James Moor、Luisa Cutillo

医学研究方法耳鼻咽喉科学

Mary Paterson,James Moor,Luisa Cutillo.A Classification Benchmark for Artificial Intelligence Detection of Laryngeal Cancer from Patient Voice[EB/OL].(2024-12-20)[2025-08-02].https://arxiv.org/abs/2412.16267.点此复制

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