Graph-based methods for cervical cancer segmentation: Advancements, limitations, and future directions

Nazar Zaki , Wenjian Qin , Anusuya Krishnan
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引用次数: 1

Abstract

Cervical cancer remains a significant health concern worldwide, where precise segmentation of cervical lesions is integral for effective diagnosis and treatment planning. This systematic review critically evaluates the application of graph-based methodologies for cervical cancer segmentation, identifying their potential, drawbacks, and avenues for future development. An exhaustive literature search across Scopus and PubMed databases resulted in 20 pertinent studies. These studies were assessed focusing on their implementation of graph-based techniques for cervical cancer segmentation, the utilized datasets, evaluation metrics, and reported precision levels. The review highlights the progressive strides made in the field, especially regarding the segmentation of intricate, non-convex regions and facilitating the detection and grading of cervical cancer using graph-based methodologies. Nonetheless, several constraints were evident, including a dearth of comparative performance analysis, reliance on high-resolution images, difficulties in specific boundary delineation, and the imperative for additional validation and diversified datasets. The review suggests future work to integrate advanced deep learning strategies for heightened accuracy, formulate hybrid methodologies to counteract existing limitations, and explore multi-modal fusion to boost segmentation precision. Emphasizing the explainability and interpretability of outcomes also stands paramount. Lastly, addressing critical challenges such as scarcity of annotated data, the need for real-time and interactive segmentation, and the segmentation of multiple objects or regions of interest remains a crucial frontier for future endeavors.

基于图的子宫颈癌分割方法:进展、限制和未来方向
宫颈癌症仍然是世界范围内一个重要的健康问题,宫颈病变的精确分割对于有效的诊断和治疗计划至关重要。这篇系统综述对基于图形的方法在宫颈癌症分割中的应用进行了批判性评估,确定了它们的潜力、缺点和未来发展的途径。在Scopus和PubMed数据库中进行了详尽的文献检索,得出了20项相关研究。对这些研究进行了评估,重点是它们对基于图形的宫颈癌症分割技术的实施、所使用的数据集、评估指标和报告的精度水平。该综述强调了该领域取得的进步,特别是在复杂非凸区域的分割以及使用基于图形的方法促进癌症的检测和分级方面。尽管如此,仍存在一些明显的制约因素,包括缺乏比较性能分析、依赖高分辨率图像、难以划定具体边界,以及需要额外的验证和多样化的数据集。该综述建议未来的工作是集成先进的深度学习策略以提高准确性,制定混合方法以抵消现有的局限性,并探索多模式融合以提高分割精度。强调结果的可解释性和可解释性也至关重要。最后,解决关键挑战,如注释数据的稀缺性、实时和交互式分割的需要以及多个感兴趣对象或区域的分割,仍然是未来努力的关键前沿。
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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CiteScore
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