Artificial Intelligence via Competitive Learning and Image Analysis for Endometrial Malignancies

Q2 Nursing
A. Pouliakis, N. Margari, Effrosyni Karakitsou, G. Valasoulis, Nektarios Koufopoulos, Nikolaos Koureas, E. Alamanou, V. Pergialiotis, V. Damaskou, I. Panayiotides
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引用次数: 4

Abstract

Objective of this study is to investigate the potential of an artificial intelligence (AI) technique, based on competitive learning, for the discrimination of benign from malignant endometrial nuclei and lesions. For this purpose, 416 liquid-based cytological smears with histological confirmation were collected, each smear corresponded to one patient. From each smear was extracted nuclear morphometric features by the application of an image analysis system. Subsequently nuclei measurement from 50% of the cases were used to train the AI system to classify each individual nucleus as benign or malignant. The remaining measurement, from the unused 50% of the cases, were used for AI system performance evaluation. Based on the results of nucleus classification the patients were discriminated as having benign or malignant disease by a secondary subsystem specifically trained for this purpose. Based on the results it was conclude that AI based computerized systems have the potential for the classification of both endometrial nuclei and lesions.
基于竞争学习和图像分析的人工智能在子宫内膜恶性肿瘤中的应用
本研究的目的是研究基于竞争学习的人工智能(AI)技术在区分良性和恶性子宫内膜细胞核和病变方面的潜力。为此,收集了416份经组织学证实的液体细胞学涂片,每份涂片对应一名患者。通过应用图像分析系统从每个涂片中提取细胞核形态计量特征。随后,使用50%病例的细胞核测量来训练AI系统,将每个细胞核分为良性或恶性。剩余的测量,来自未使用的50%的案例,用于人工智能系统性能评估。根据细胞核分类的结果,通过专门为此目的训练的次级子系统将患者区分为良性或恶性疾病。基于这些结果,可以得出结论,基于人工智能的计算机系统具有对子宫内膜细胞核和病变进行分类的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
43
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