Enhancing Lung Disease Diagnosis via Semi-Supervised Machine Learning
Enhancing Lung Disease Diagnosis via Semi-Supervised Machine Learning
Lung diseases, including lung cancer and COPD, are significant health concerns globally. Traditional diagnostic methods can be costly, time-consuming, and invasive. This study investigates the use of semi supervised learning methods for lung sound signal detection using a model combination of MFCC+CNN. By introducing semi supervised learning modules such as Mix Match, Co-Refinement, and Co Refurbishing, we aim to enhance the detection performance while reducing dependence on manual annotations. With the add-on semi-supervised modules, the accuracy rate of the MFCC+CNN model is 92.9%, an increase of 3.8% to the baseline model. The research contributes to the field of lung disease sound detection by addressing challenges such as individual differences, feature insufficient labeled data.
Xiaoran Xua、In-Ho Rab、Ravi Sankarc
医学研究方法计算技术、计算机技术
Xiaoran Xua,In-Ho Rab,Ravi Sankarc.Enhancing Lung Disease Diagnosis via Semi-Supervised Machine Learning[EB/OL].(2025-07-20)[2025-08-10].https://arxiv.org/abs/2507.16845.点此复制
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