Digitization of Gynecology Using Artificial Intelligence: Cervical Mapping Corroborated With Clinical Data for Conization Necessity

Dorina Adelina Minciună, Demetra Gabriela Socolov, Attila Szőcs, Doina Ivanov, Tudor Gîscă, Valentin Nechifor, Sándor Budai, Ákos Bálint, Răzvan Socolov
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Abstract

Abstract Background Cervical cancer is the fourth most common female malignancy worldwide. In developing countries, it is the most common subtype of cancer and the third leading cause of cancer mortality among women. Artificial intelligence has the potential to be of real use in the prevention and prompt diagnosis of cervical cancer. The aim of our study was to develop a medical platform consisting of an automated observation sheet containing colposcopy data, a software that would use a machine learning module based on clinical and image data for diagnosis and treatment, and a telemedicine module to enable collaboration between gynecologists. Materials and methods Clinical and colposcopy image data from 136 patients were introduced into a machine learning module designed to generate an algorithm for proposing a preliminary diagnosis and treatment. The clinical and imaging data were corroborated to generate six options: ‘Follow-up’, ‘Pharmacotherapy’, ‘Biopsy’, ‘Curettage’, ‘DTC’, and ‘Conization’. Results Data generated by the machine learning module regarding treatment options were compared with the opinion of gynecologists and yielded an accuracy of 78% for ‘Follow-up’, 81% for ‘Pharmacotherapy’, 84% for ‘Biopsy’, 90% for ‘Curettage’, 96% for ‘DTC’, and 81% for ‘Conization’. Conclusions The developed software can be an important step towards the digitization of existing gynecology offices and the creation of intelligently automated gynecology offices related to prevention and treatment of cervical cancer. More data is needed to improve the accuracy of the developed software.
应用人工智能的妇科数字化:宫颈测绘与临床数据相佐证的锥化必要性
背景宫颈癌是全球第四大最常见的女性恶性肿瘤。在发展中国家,它是最常见的癌症亚型,也是妇女癌症死亡的第三大原因。人工智能有潜力在宫颈癌的预防和及时诊断中得到真正的应用。我们的研究目的是开发一个医疗平台,该平台包括包含阴道镜数据的自动观察表,一个软件,该软件将使用基于临床和图像数据的机器学习模块进行诊断和治疗,以及一个远程医疗模块,以实现妇科医生之间的协作。材料和方法将136例患者的临床和阴道镜图像数据引入机器学习模块,旨在生成提出初步诊断和治疗的算法。临床和影像学数据得到证实,产生六个选项:“随访”、“药物治疗”、“活检”、“刮除”、“DTC”和“锥形化”。结果将机器学习模块生成的关于治疗方案的数据与妇科医生的意见进行比较,得出“随访”的准确率为78%,“药物治疗”的准确率为81%,“活检”的准确率为84%,“刮除”的准确率为90%,“DTC”的准确率为96%,“锥化”的准确率为81%。结论所开发的软件是实现现有妇科办公室数字化、创建宫颈癌防治相关智能自动化妇科办公室的重要一步。需要更多的数据来提高所开发软件的准确性。
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