宫颈异常检测和分级的显微诊断成像方式、挑战、分类和未来方向的综合研究

Anindita Mohanta;Sourav Dey Roy;Niharika Nath;Abhijit Datta;Mrinal Kanti Bhowmik
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引用次数: 0

摘要

癌症是最严重的疾病之一,影响着现代世界许多人的生活。在各类癌症中,子宫颈癌是女性人群中最常见的癌症之一。在大多数情况下,医生和从业员通常只能在宫颈癌的后期阶段识别宫颈癌。随着病情的发展,规划癌症治疗和提高患者存活率变得非常困难。因此,及早诊断子宫颈癌,以安排适当的治疗和手术已成为当务之急。在这篇文章中,我们提出了一项基于显微成像模式的诊断宫颈异常的自动计算机方法的调查。目前的调查是通过根据他们使用的方法定义一种新的调查技术分类来进行的。我们还讨论了与基于显微成像方式的宫颈癌自动诊断相关的挑战和亚挑战。此外,还介绍了研究界用于开发新方法的各种公共和私人数据集的调查。本文对已发表论文的性能进行了比较。文章最后提出了今后可能的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Survey on Diagnostic Microscopic Imaging Modalities, Challenges, Taxonomy, and Future Directions for Cervical Abnormality Detection and Grading
Cancer is one of the most severe diseases, affecting the lives of many people in the modern world. Among the various types of cancer, cervical cancer is one of the most frequently occurring cancers in the female population. In most cases, doctors and practitioners can typically only identify cervical cancer in its latter stages. Planning cancer therapy and increasing patient survival rates become very difficult as the disease progresses. As a result, diagnosing cervical cancer in its initial stages has become imperative to arrange proper therapy and surgery. In this article, we present a survey of automatic computerized methods for diagnosing cervical abnormalities based on microscopic imaging modalities. The present survey was conducted by defining a novel taxonomy of the surveyed techniques based on the approaches they used. We also discuss the challenges and subchallenges associated with an automatic cervical cancer diagnosis based on microscopic imaging modalities. Additionally, surveys on various public and private datasets used by the research community for developing new methods are presented. In this article, the performances of published papers are compared. The article concludes by suggesting possible research directions in these fields.
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CiteScore
7.70
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