Instance segmentation of nuclei and glands in the histology images is an important step in computational pathology workflow for cancer diagnosis, treatment planning and survival analysis. With the advent of modern hardware, the recent availability of large-scale quality public datasets and the community organized grand challenges have seen a surge in automated methods focusing on domain specific challenges, which is pivotal for technology advancements and clinical translation. In this survey, 126 papers illustrating the AI based methods for nuclei and glands instance segmentation published in the last five years (2017-2022) are deeply analyzed, the limitations of current approaches and the open challenges are discussed. Moreover, the potential future research direction is presented and the contribution of state-of-the-art methods is summarized. Further, a generalized summary of publicly available datasets and a detailed insights on the grand challenges illustrating the top performing methods specific to each challenge is also provided. Besides, we intended to give the reader current state of existing research and pointers to the future directions in developing methods that can be used in clinical practice enabling improved diagnosis, grading, prognosis, and treatment planning of cancer. To the best of our knowledge, no previous work has reviewed the instance segmentation in histology images focusing towards this direction.
翻译:随着现代硬件的到来,最近大规模优质公共数据集的提供情况以及社区组织起来的巨大挑战,出现了侧重于领域具体挑战的自动化方法激增,这对于技术进步和临床翻译至关重要。在这次调查中,对过去5年(2017-2022年)公布的以AI为基础的核心和腺体分解方法的126份文件进行了深入分析,讨论了当前方法的局限性和公开挑战。此外,还介绍了未来可能的研究方向,并概述了最新技术方法的贡献。此外,还提供了公开可得数据集的通用概要,并详细了解了显示每项挑战所特有的顶级性能方法的重大挑战。此外,我们打算向读者介绍现有研究和指针的现状,说明今后如何制定方法,用于临床实践,改进诊断、分级、预测和癌症治疗。为了突出我们知识的方向,我们没有审查他以前的工作方向,没有审查他以前的工作方向。