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Deep convolutional neural networks using an active learning strategy for cervical cancer screening and diagnosis.


ABSTRACT: Cervical cancer (CC) is the fourth most common malignant tumor among women worldwide. Constructing a high-accuracy deep convolutional neural network (DCNN) for cervical cancer screening and diagnosis is important for the successful prevention of cervical cancer. In this work, we proposed a robust DCNN for cervical cancer screening using whole-slide images (WSI) of ThinPrep cytologic test (TCT) slides from 211 cervical cancer and 189 normal patients. We used an active learning strategy to improve the efficiency and accuracy of image labeling. The sensitivity, specificity, and accuracy of the best model were 96.21%, 98.95%, and 97.5% for CC patient identification respectively. Our results also demonstrated that the active learning strategy was superior to the traditional supervised learning strategy in cost reduction and improvement of image labeling quality. The related data and source code are freely available at https://github.com/hqyone/cancer_rcnn.

SUBMITTER: Li X 

PROVIDER: S-EPMC10034408 | biostudies-literature | 2023

REPOSITORIES: biostudies-literature

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Deep convolutional neural networks using an active learning strategy for cervical cancer screening and diagnosis.

Li Xueguang X   Du Mingyue M   Zuo Shanru S   Zhou Mingqing M   Peng Qiyao Q   Chen Ziyao Z   Zhou Junhua J   He Quanyuan Q  

Frontiers in bioinformatics 20230309


Cervical cancer (CC) is the fourth most common malignant tumor among women worldwide. Constructing a high-accuracy deep convolutional neural network (DCNN) for cervical cancer screening and diagnosis is important for the successful prevention of cervical cancer. In this work, we proposed a robust DCNN for cervical cancer screening using whole-slide images (WSI) of ThinPrep cytologic test (TCT) slides from 211 cervical cancer and 189 normal patients. We used an active learning strategy to improve  ...[more]

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