Literature DB >> 34987798

An artificial intelligence-assisted diagnostic system improves the accuracy of image diagnosis of uterine cervical lesions.

Yu Ito1, Ai Miyoshi1, Yutaka Ueda1, Yusuke Tanaka1, Ruriko Nakae1, Akiko Morimoto1, Mayu Shiomi1, Takayuki Enomoto2, Masayuki Sekine2, Toshiyuki Sasagawa3, Kiyoshi Yoshino4, Hiroshi Harada4, Takafumi Nakamura5, Takuya Murata5, Keizo Hiramatsu6, Junko Saito7, Junko Yagi8, Yoshiaki Tanaka9, Tadashi Kimura1.   

Abstract

The present study created an artificial intelligence (AI)-automated diagnostics system for uterine cervical lesions and assessed the performance of these images for AI diagnostic imaging of pathological cervical lesions. A total of 463 colposcopic images were analyzed. The traditional colposcopy diagnoses were compared to those obtained by AI image diagnosis. Next, 100 images were presented to a panel of 32 gynecologists who independently examined each image in a blinded fashion and diagnosed them for four categories of tumors. Then, the 32 gynecologists revisited their diagnosis for each image after being informed of the AI diagnosis. The present study assessed any changes in physician diagnosis and the accuracy of AI-image-assisted diagnosis (AISD). The accuracy of AI was 57.8% for normal, 35.4% for cervical intraepithelial neoplasia (CIN)1, 40.5% for CIN2-3 and 44.2% for invasive cancer. The accuracy of gynecologist diagnoses from cervical pathological images, before knowing the AI image diagnosis, was 54.4% for CIN2-3 and 38.9% for invasive cancer. After learning of the AISD, their accuracy improved to 58.0% for CIN2-3 and 48.5% for invasive cancer. AI-assisted image diagnosis was able to improve gynecologist diagnosis accuracy significantly (P<0.01) for invasive cancer and tended to improve their accuracy for CIN2-3 (P=0.14).
Copyright © 2020, Spandidos Publications.

Entities:  

Keywords:  artificial intelligence; cervical cancer; cervical intraepithelial neoplasia; colposcopy; deep learning; image diagnosis

Year:  2021        PMID: 34987798      PMCID: PMC8719259          DOI: 10.3892/mco.2021.2460

Source DB:  PubMed          Journal:  Mol Clin Oncol        ISSN: 2049-9450


  13 in total

1.  An Observational Study of Deep Learning and Automated Evaluation of Cervical Images for Cancer Screening.

Authors:  Liming Hu; David Bell; Sameer Antani; Zhiyun Xue; Kai Yu; Matthew P Horning; Noni Gachuhi; Benjamin Wilson; Mayoore S Jaiswal; Brian Befano; L Rodney Long; Rolando Herrero; Mark H Einstein; Robert D Burk; Maria Demarco; Julia C Gage; Ana Cecilia Rodriguez; Nicolas Wentzensen; Mark Schiffman
Journal:  J Natl Cancer Inst       Date:  2019-09-01       Impact factor: 13.506

2.  Histologic correlation between smartphone and coloposcopic findings in patients with abnormal cervical cytology: experiences in a tertiary referral hospital.

Authors:  Yusuke Tanaka; Yutaka Ueda; Reisa Kakubari; Mamoru Kakuda; Satoshi Kubota; Satoko Matsuzaki; Akiko Okazawa; Tomomi Egawa-Takata; Shinya Matsuzaki; Eiji Kobayashi; Tadashi Kimura
Journal:  Am J Obstet Gynecol       Date:  2019-05-07       Impact factor: 8.661

3.  A demonstration of automated visual evaluation of cervical images taken with a smartphone camera.

Authors:  Zhiyun Xue; Akiva P Novetsky; Mark H Einstein; Jenna Z Marcus; Brian Befano; Peng Guo; Maria Demarco; Nicolas Wentzensen; Leonard Rodney Long; Mark Schiffman; Sameer Antani
Journal:  Int J Cancer       Date:  2020-05-19       Impact factor: 7.396

4.  Accuracy of colposcopy-directed biopsy in detecting early cervical neoplasia: a retrospective study.

Authors:  Frederik A Stuebs; Carla E Schulmeyer; Grit Mehlhorn; Paul Gass; Sven Kehl; Simone K Renner; Stefan P Renner; Carol Geppert; Werner Adler; Arndt Hartmann; Matthias W Beckmann; Martin C Koch
Journal:  Arch Gynecol Obstet       Date:  2018-10-27       Impact factor: 2.344

Review 5.  Artificial intelligence in healthcare: past, present and future.

Authors:  Fei Jiang; Yong Jiang; Hui Zhi; Yi Dong; Hao Li; Sufeng Ma; Yilong Wang; Qiang Dong; Haipeng Shen; Yongjun Wang
Journal:  Stroke Vasc Neurol       Date:  2017-06-21

6.  The application of deep learning based diagnostic system to cervical squamous intraepithelial lesions recognition in colposcopy images.

Authors:  Chunnv Yuan; Yeli Yao; Bei Cheng; Yifan Cheng; Ying Li; Yang Li; Xuechen Liu; Xiaodong Cheng; Xing Xie; Jian Wu; Xinyu Wang; Weiguo Lu
Journal:  Sci Rep       Date:  2020-07-15       Impact factor: 4.379

7.  The challenges of colposcopy for cervical cancer screening in LMICs and solutions by artificial intelligence.

Authors:  Peng Xue; Man Tat Alexander Ng; Youlin Qiao
Journal:  BMC Med       Date:  2020-06-03       Impact factor: 8.775

8.  Automatic model for cervical cancer screening based on convolutional neural network: a retrospective, multicohort, multicenter study.

Authors:  Xiangyu Tan; Kexin Li; Jiucheng Zhang; Wenzhe Wang; Bian Wu; Jian Wu; Xiaoping Li; Xiaoyuan Huang
Journal:  Cancer Cell Int       Date:  2021-01-07       Impact factor: 5.722

9.  Accuracy of the Triple Test Versus Colposcopy for the Diagnosis of Premalignant and Malignant Cervical Lesions.

Authors:  Neda Fatahi Meybodi; Mojgan Karimi-Zarchi; Leila Allahqoli; Leila Sekhavat; George Gitas; Azam Rahmani; Arezoo Fallahi; Babak Hassanlouei; Ibrahim Alkatout
Journal:  Asian Pac J Cancer Prev       Date:  2020-12-01
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  1 in total

1.  Development of a prognostic prediction support system for cervical intraepithelial neoplasia using artificial intelligence-based diagnosis.

Authors:  Takayuki Takahashi; Hikaru Matsuoka; Rieko Sakurai; Jun Akatsuka; Yusuke Kobayashi; Masaru Nakamura; Takashi Iwata; Kouji Banno; Motomichi Matsuzaki; Jun Takayama; Daisuke Aoki; Yoichiro Yamamoto; Gen Tamiya
Journal:  J Gynecol Oncol       Date:  2022-05-16       Impact factor: 4.756

  1 in total

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