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Development of an Expert System as a Diagnostic Support of Cervical Cancer in Atypical Glandular Cells, Based on Fuzzy Logics and Image Interpretation

机译:基于模糊逻辑和图像解释,将专家系统作为宫颈癌诊断支持,基于模糊逻辑和图像解释,成为非典型腺体细胞中的诊断支持

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Cervical cancer is the second largest cause of death among women worldwide. Nowadays, this disease is preventable and curable at low cost and low risk when an accurate diagnosis is done in due time, since it is the neoplasm with the highest prevention potential. This work describes the development of an expert system able to provide a diagnosis to cervical neoplasia (CN) precursor injuries through the integration of fuzzy logics and image interpretation techniques. The key contribution of this research focuses on atypical cases, specifically on atypical glandular cells (AGC). The expert system consists of 3 phases: (1) risk diagnosis which consists of the interpretation of a patient’s clinical background and the risks for contracting CN according to specialists; (2) cytology images detection which consists of image interpretation (IM) and the Bethesda system for cytology interpretation, and (3) determination of cancer precursor injuries which consists of in retrieving the information from the prior phases and integrating the expert system by means of a fuzzy logics (FL) model. During the validation stage of the system, 21 already diagnosed cases were tested with a positive correlation in which 100% effectiveness was obtained. The main contribution of this work relies on the reduction of false positives and false negatives by providing a more accurate diagnosis for CN.
机译:宫颈癌是全世界妇女死亡的第二大死因。如今,当在适当时期进行准确的诊断时,这种疾病可预防和固化,并且在准确的诊断时,由于它是预防潜力最高的肿瘤。这项工作描述了能够通过模糊逻辑和图像解释技术的集成来提供对宫颈瘤形成(CN)前体损伤的诊断的专家系统的发展。本研究的主要贡献侧重于非典型病例,特别是在非典型腺细胞(AGC)上。专家系统由3个阶段组成:(1)风险诊断,包括解释患者的临床背景和根据专家收缩CN的风险; (2)细胞学图像检测,由图像解释(IM)和细胞学解释系统和(3)测定癌症前体伤害,其包括从先前阶段检索信息并通过逐个整合专家系统模糊逻辑(FL)模型。在系统的验证阶段期间,使用阳性相关性测试21例已经诊断出的病例,其中获得了100%的有效性。这项工作的主要贡献依赖于通过为CN提供更准确的诊断来减少误报和假阴性。

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