人工智能
欠采样
计算机科学
机器学习
深度学习
癌症
人口
模式识别(心理学)
医学
内科学
环境卫生
作者
Bofan Song,Shaobai Li,Sumsum Sunny,Keerthi Gurushanth,Pramila Mendonca,Nirza Mukhia,Sanjana Patrick,Shubha Gurudath,Subhashini Raghavan,Tsusennaro Imchen,Shirley T Leivon,Trupti Kolur,Vivek Shetty,Vidya Bhushan Rangappa,Rohan Michael Ramesh,T.W. Peterson,Vijay Pillai,Petra Wilder‐Smith,Alben Sigamani,Amritha Suresh,Moni Abraham Kuriakose,Praveen Birur,Rongguang Liang
标识
DOI:10.1117/1.jbo.26.10.105001
摘要
Early detection of oral cancer is vital for high-risk patients, and machine learning-based automatic classification is ideal for disease screening. However, current datasets collected from high-risk populations are unbalanced and often have detrimental effects on the performance of classification.To reduce the class bias caused by data imbalance.We collected 3851 polarized white light cheek mucosa images using our customized oral cancer screening device. We use weight balancing, data augmentation, undersampling, focal loss, and ensemble methods to improve the neural network performance of oral cancer image classification with the imbalanced multi-class datasets captured from high-risk populations during oral cancer screening in low-resource settings.By applying both data-level and algorithm-level approaches to the deep learning training process, the performance of the minority classes, which were difficult to distinguish at the beginning, has been improved. The accuracy of "premalignancy" class is also increased, which is ideal for screening applications.Experimental results show that the class bias induced by imbalanced oral cancer image datasets could be reduced using both data- and algorithm-level methods. Our study may provide an important basis for helping understand the influence of unbalanced datasets on oral cancer deep learning classifiers and how to mitigate.
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