Artificial Neural Networks as Decision Support Tools in Cytopathology: Past, Present, and Future.

IF 2.3 Q3 ENGINEERING, BIOMEDICAL Biomedical Engineering and Computational Biology Pub Date : 2016-02-18 eCollection Date: 2016-01-01 DOI:10.4137/BECB.S31601
Abraham Pouliakis, Efrossyni Karakitsou, Niki Margari, Panagiotis Bountris, Maria Haritou, John Panayiotides, Dimitrios Koutsouris, Petros Karakitsos
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Abstract

Objective: This study aims to analyze the role of artificial neural networks (ANNs) in cytopathology. More specifically, it aims to highlight the importance of employing ANNs in existing and future applications and in identifying unexplored or poorly explored research topics.

Study design: A systematic search was conducted in scientific databases for articles related to cytopathology and ANNs with respect to anatomical places of the human body where cytopathology is performed. For each anatomic system/organ, the major outcomes described in the scientific literature are presented and the most important aspects are highlighted.

Results: The vast majority of ANN applications are related to cervical cytopathology, specifically for the ANN-based, semiautomated commercial diagnostic system PAPNET. For cervical cytopathology, there is a plethora of studies relevant to the diagnostic accuracy; in addition, there are also efforts evaluating cost-effectiveness and applications on primary, secondary, or hybrid screening. For the rest of the anatomical sites, such as the gastrointestinal system, thyroid gland, urinary tract, and breast, there are significantly less efforts relevant to the application of ANNs. Additionally, there are still anatomical systems for which ANNs have never been applied on their cytological material.

Conclusions: Cytopathology is an ideal discipline to apply ANNs. In general, diagnosis is performed by experts via the light microscope. However, this approach introduces subjectivity, because this is not a universal and objective measurement process. This has resulted in the existence of a gray zone between normal and pathological cases. From the analysis of related articles, it is obvious that there is a need to perform more thorough analyses, using extensive number of cases and particularly for the nonexplored organs. Efforts to apply such systems within the laboratory test environment are required for their future uptake.

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作为细胞病理学决策支持工具的人工神经网络:过去、现在和未来。
研究目的本研究旨在分析人工神经网络(ANN)在细胞病理学中的作用。更具体地说,它旨在强调在现有和未来应用中采用人工神经网络的重要性,以及确定尚未探索或探索不足的研究课题的重要性:研究设计:我们在科学数据库中系统搜索了与细胞病理学和ANN有关的文章,这些文章涉及进行细胞病理学检查的人体解剖部位。对于每个解剖系统/器官,都列出了科学文献中描述的主要结果,并强调了最重要的方面:ANN的绝大多数应用都与宫颈细胞病理学有关,特别是基于ANN的半自动商业诊断系统PAPNET。在宫颈细胞病理学方面,有大量与诊断准确性相关的研究;此外,还有一些评估成本效益和应用于初筛、复筛或混合筛查的研究。至于其他解剖部位,如胃肠道系统、甲状腺、泌尿道和乳腺,与应用人工神经网络相关的研究则要少得多。此外,仍有一些解剖系统的细胞学材料从未应用过 ANNs:细胞病理学是应用人工智能的理想学科。一般来说,诊断是由专家通过光学显微镜进行的。然而,这种方法带有主观性,因为这不是一个普遍和客观的测量过程。这导致正常病例和病理病例之间存在灰色地带。从对相关文章的分析来看,显然有必要利用大量病例进行更全面的分析,尤其是针对未探索过的器官。需要努力在实验室测试环境中应用此类系统,以便将来得到广泛应用。
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