Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies
Abstract Background Colposcopy diagnosis and directed biopsy are the key components in cervical cancer screening programs. However, their performance is limited by the requirement for experienced colposcopists. This study aimed to develop and validate a Colposcopic Artificial Intelligence Auxiliary...
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2020-12-01
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Online Access: | https://doi.org/10.1186/s12916-020-01860-y |
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Article |
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DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peng Xue Chao Tang Qing Li Yuexiang Li Yu Shen Yuqian Zhao Jiawei Chen Jianrong Wu Longyu Li Wei Wang Yucong Li Xiaoli Cui Shaokai Zhang Wenhua Zhang Xun Zhang Kai Ma Yefeng Zheng Tianyi Qian Man Tat Alexander Ng Zhihua Liu Youlin Qiao Yu Jiang Fanghui Zhao |
spellingShingle |
Peng Xue Chao Tang Qing Li Yuexiang Li Yu Shen Yuqian Zhao Jiawei Chen Jianrong Wu Longyu Li Wei Wang Yucong Li Xiaoli Cui Shaokai Zhang Wenhua Zhang Xun Zhang Kai Ma Yefeng Zheng Tianyi Qian Man Tat Alexander Ng Zhihua Liu Youlin Qiao Yu Jiang Fanghui Zhao Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies BMC Medicine Artificial intelligence Cervical cancer prevention Colposcopy diagnosis and biopsy Global elimination of cervical cancer |
author_facet |
Peng Xue Chao Tang Qing Li Yuexiang Li Yu Shen Yuqian Zhao Jiawei Chen Jianrong Wu Longyu Li Wei Wang Yucong Li Xiaoli Cui Shaokai Zhang Wenhua Zhang Xun Zhang Kai Ma Yefeng Zheng Tianyi Qian Man Tat Alexander Ng Zhihua Liu Youlin Qiao Yu Jiang Fanghui Zhao |
author_sort |
Peng Xue |
title |
Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies |
title_short |
Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies |
title_full |
Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies |
title_fullStr |
Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies |
title_full_unstemmed |
Development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies |
title_sort |
development and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsies |
publisher |
BMC |
series |
BMC Medicine |
issn |
1741-7015 |
publishDate |
2020-12-01 |
description |
Abstract Background Colposcopy diagnosis and directed biopsy are the key components in cervical cancer screening programs. However, their performance is limited by the requirement for experienced colposcopists. This study aimed to develop and validate a Colposcopic Artificial Intelligence Auxiliary Diagnostic System (CAIADS) for grading colposcopic impressions and guiding biopsies. Methods Anonymized digital records of 19,435 patients were obtained from six hospitals across China. These records included colposcopic images, clinical information, and pathological results (gold standard). The data were randomly assigned (7:1:2) to a training and a tuning set for developing CAIADS and to a validation set for evaluating performance. Results The agreement between CAIADS-graded colposcopic impressions and pathology findings was higher than that of colposcopies interpreted by colposcopists (82.2% versus 65.9%, kappa 0.750 versus 0.516, p < 0.001). For detecting pathological high-grade squamous intraepithelial lesion or worse (HSIL+), CAIADS showed higher sensitivity than the use of colposcopies interpreted by colposcopists at either biopsy threshold (low-grade or worse 90.5%, 95% CI 88.9–91.4% versus 83.5%, 81.5–85.3%; high-grade or worse 71.9%, 69.5–74.2% versus 60.4%, 57.9–62.9%; all p < 0.001), whereas the specificities were similar (low-grade or worse 51.8%, 49.8–53.8% versus 52.0%, 50.0–54.1%; high-grade or worse 93.9%, 92.9–94.9% versus 94.9%, 93.9–95.7%; all p > 0.05). The CAIADS also demonstrated a superior ability in predicting biopsy sites, with a median mean-intersection-over-union (mIoU) of 0.758. Conclusions The CAIADS has potential in assisting beginners and for improving the diagnostic quality of colposcopy and biopsy in the detection of cervical precancer/cancer. |
topic |
Artificial intelligence Cervical cancer prevention Colposcopy diagnosis and biopsy Global elimination of cervical cancer |
url |
https://doi.org/10.1186/s12916-020-01860-y |
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doaj-c06c6227e5ed47808fa4a272226f31342020-12-27T12:10:39ZengBMCBMC Medicine1741-70152020-12-0118111010.1186/s12916-020-01860-yDevelopment and validation of an artificial intelligence system for grading colposcopic impressions and guiding biopsiesPeng Xue0Chao Tang1Qing Li2Yuexiang Li3Yu Shen4Yuqian Zhao5Jiawei Chen6Jianrong Wu7Longyu Li8Wei Wang9Yucong Li10Xiaoli Cui11Shaokai Zhang12Wenhua Zhang13Xun Zhang14Kai Ma15Yefeng Zheng16Tianyi Qian17Man Tat Alexander Ng18Zhihua Liu19Youlin Qiao20Yu Jiang21Fanghui Zhao22Department of Epidemiology and Biostatistics, School of Population Medicine and Public Health, Chinese Academy of Medical Sciences and Peking Union Medical CollegeSchool of Public Health, Dalian Medical UniversityDiagnosis and Treatment for Cervical Lesions Center, Shenzhen Maternity & Child Healthcare HospitalTencent Jarvis LabZonsun HealthcareCenter for Cancer Prevention Research, Sichuan Cancer Hospital & Institute, Sichuan Cancer Center, School of Medicine, University of Electronic Science and Technology of ChinaTencent Jarvis LabTencent HealthcareJiangxi Maternal and Child Health HospitalChengdu Women’s and Children’s Central Hospital, School of Medicine, University of Electronic Science and Technology of ChinaChongqing University Cancer HospitalCancer Hospital of China Medical University, Liaoning Cancer Hospital & InstituteAffiliated Cancer Hospital of Zhengzhou University/Henan Cancer HospitalDepartment of Cancer Epidemiology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical CollegeDepartment of Pathology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical CollegeTencent Jarvis LabTencent Jarvis LabTencent HealthcareTencent HealthcareDepartment of Gynecology, Shenzhen Maternity & Child Healthcare HospitalDepartment of Epidemiology and Biostatistics, School of Population Medicine and Public Health, Chinese Academy of Medical Sciences and Peking Union Medical CollegeDepartment of Epidemiology and Biostatistics, School of Population Medicine and Public Health, Chinese Academy of Medical Sciences and Peking Union Medical CollegeDepartment of Cancer Epidemiology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical CollegeAbstract Background Colposcopy diagnosis and directed biopsy are the key components in cervical cancer screening programs. However, their performance is limited by the requirement for experienced colposcopists. This study aimed to develop and validate a Colposcopic Artificial Intelligence Auxiliary Diagnostic System (CAIADS) for grading colposcopic impressions and guiding biopsies. Methods Anonymized digital records of 19,435 patients were obtained from six hospitals across China. These records included colposcopic images, clinical information, and pathological results (gold standard). The data were randomly assigned (7:1:2) to a training and a tuning set for developing CAIADS and to a validation set for evaluating performance. Results The agreement between CAIADS-graded colposcopic impressions and pathology findings was higher than that of colposcopies interpreted by colposcopists (82.2% versus 65.9%, kappa 0.750 versus 0.516, p < 0.001). For detecting pathological high-grade squamous intraepithelial lesion or worse (HSIL+), CAIADS showed higher sensitivity than the use of colposcopies interpreted by colposcopists at either biopsy threshold (low-grade or worse 90.5%, 95% CI 88.9–91.4% versus 83.5%, 81.5–85.3%; high-grade or worse 71.9%, 69.5–74.2% versus 60.4%, 57.9–62.9%; all p < 0.001), whereas the specificities were similar (low-grade or worse 51.8%, 49.8–53.8% versus 52.0%, 50.0–54.1%; high-grade or worse 93.9%, 92.9–94.9% versus 94.9%, 93.9–95.7%; all p > 0.05). The CAIADS also demonstrated a superior ability in predicting biopsy sites, with a median mean-intersection-over-union (mIoU) of 0.758. Conclusions The CAIADS has potential in assisting beginners and for improving the diagnostic quality of colposcopy and biopsy in the detection of cervical precancer/cancer.https://doi.org/10.1186/s12916-020-01860-yArtificial intelligenceCervical cancer preventionColposcopy diagnosis and biopsyGlobal elimination of cervical cancer |