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Computer Assisted Detection of regions of interest in histopathology using a hybrid supervised and unsupervised approach

机译:计算机辅助检测组织病理学的兴趣区域使用杂交监督和无人监督的方法

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The detection of suspicious cancerous regions is still a problematic task in histopathology, where complex qualitative, and highly subjective, analyses are required by experts. Digital pathology is the option for building semi-automated tools that could assist pathologists in carrying out their analysis in a quantitative way. Methods for assisted detection of cancerous areas are mostly based on low level textural features of the tissue, whose semantic level is far from the visual appearance that histopathologists consider during their analysis. In order to bridge the semantic gap between histopathology and machine representation, we propose an algorithm for the detection of cancerous regions in lung and bladder adenocarcinoma samples, based on a supervised multi-level representation directly linked to histopathological characteristics. Instead, our unsupervised clustering method performs a segmentation of the histopathology structures according to their visual appearance through a similarity metric based on histograms of samples in the Lab perceptive color space. This permits to increase the sensitivity of the supervised approach by extending the regions (i.e., hits) it detects. We validated the accuracy of the proposed segmentation approach, using a group of ten users using 40 histopathology cases, showing a good response. The experiments, performed using the ground truth provided by a board of certified experts on different samples of adenocarcinoma (graded Gl), prove the effectiveness of our approach both in terms of sensitivity and precision in detecting suspicious regions. Our algorithm is currently under testing on more samples and different cancerous histotypes.
机译:检测可疑癌症区域仍然是组织病理学的问题任务,在那里专家要求复杂的定性和高度主观分析。数字病理学是建立半自动工具的选择,可以帮助病理学家以定量方式进行分析。用于辅助检测癌区域的方法主要是基于组织的低位纹理特征,其语义水平远离组织病理学家在分析期间考虑的视觉外观。为了弥合组织病理学和机器代表之间的语义间隙,基于直接与组织病理学特征直接相关的监督多级表示,提出一种用于检测肺和膀胱腺癌样品中的癌变区的算法。相反,我们无监督的聚类方法通过基于实验室感知颜色空间中的样本的直方图,通过相似度量来执行组织病理结构的分割。这允许通过延长它检测到的区域(即,命中)来提高监督方法的灵敏度。我们验证了所提出的分割方法的准确性,使用40个组织病理学病例的十个用户,表现出良好的反应。使用由腺癌(渐变GL)的不同样品的经过认证专家委员会提供的地面真理进行的实验,在检测可疑地区的敏感度和精确度方面证明了我们的方法的有效性。我们的算法目前正在测试更多样本和不同的癌细胞分子。

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