Artificial Intelligence in Ultrasound Diagnoses of Ovarian Cancer: A Systematic Review and Meta-Analysis

Author:

Mitchell Sian1,Nikolopoulos Manolis1,El-Zarka Alaa2ORCID,Al-Karawi Dhurgham3ORCID,Al-Zaidi Shakir3,Ghai Avi4,Gaughran Jonathan E.1ORCID,Sayasneh Ahmad56

Affiliation:

1. Department of Women’s Health, Guy’s and St Thomas’ Hospital NHS Foundation Trust, London SE1 7EH, UK

2. Department of Gynaecology, Alexandria Faculty of Medicine, Alexandria 21433, Egypt

3. Medical Analytica Ltd., Flint CH6 SXA, UK

4. School of Life Course Sciences, Faculty of Life Sciences and Medicine, King’s College London, Strand, London WC2R 2LS, UK

5. Department of Gynaecological Oncology, Surgical Oncology Directorate, Cancer Centre, Guy’s Hospital, Great Maze Pond, London SE1 9RT, UK

6. School of Life Course Sciences, Faculty of Life Sciences and Medicine, St Thomas Hospital, Westminster Bridge Road, London SE1 7EH, UK

Abstract

Ovarian cancer is the sixth most common malignancy, with a 35% survival rate across all stages at 10 years. Ultrasound is widely used for ovarian tumour diagnosis, and accurate pre-operative diagnosis is essential for appropriate patient management. Artificial intelligence is an emerging field within gynaecology and has been shown to aid in the ultrasound diagnosis of ovarian cancers. For this study, Embase and MEDLINE databases were searched, and all original clinical studies that used artificial intelligence in ultrasound examinations for the diagnosis of ovarian malignancies were screened. Studies using histopathological findings as the standard were included. The diagnostic performance of each study was analysed, and all the diagnostic performances were pooled and assessed. The initial search identified 3726 papers, of which 63 were suitable for abstract screening. Fourteen studies that used artificial intelligence in ultrasound diagnoses of ovarian malignancies and had histopathological findings as a standard were included in the final analysis, each of which had different sample sizes and used different methods; these studies examined a combined total of 15,358 ultrasound images. The overall sensitivity was 81% (95% CI, 0.80–0.82), and specificity was 92% (95% CI, 0.92–0.93), indicating that artificial intelligence demonstrates good performance in ultrasound diagnoses of ovarian cancer. Further prospective work is required to further validate AI for its use in clinical practice.

Publisher

MDPI AG

Reference50 articles.

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2. Cancer Research UK (2022, May 06). Ovarian Cancer Statistics. Available online: https://www.cancerresearchuk.org/health-professional/cancer-statistics/statistics-by-cancer-type/ovarian-cancer#heading-Zero.

3. Reid, B.M., Permuth, J.B., and Sellers, T.A. (2017). Epidemiology of ovarian cancer: A review. Cancer Biol. Med., 14.

4. Koshiyama, M., Matsumura, N., and Konishi, I. (2017). Subtypes of Ovarian Cancer and Ovarian Cancer Screening. Diagnostics, 7.

5. Ovarian cancer screening: Current status and future directions;Nash;Best Pract. Res. Clin. Obstet. Gynaecol.,2020

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