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Deep learning to segment liver metastases on CT images: impact on a radiomics method to predict response to chemotherapy

机译:深度学习在CT图像上分割肝转移:对放射化学方法的影响以预测对化学疗法的反应

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Predicting response to neo-adjuvant chemotherapy of liver metastases (mts) using CT images is of key importance to provide personalized treatments. However, manual segmentation of mts should be avoid to develop methods that could be integrated into the clinical practice. The aim of this study is to evaluate if and how much automatic segmentation can affect a radiomics-based method to predict response to neoadjuvant chemotherapy of individual liver mts. To this scope, we developed an automatic deep learning method to segment liver mts, based on the U-net architecture, and we compared the classification results of a classifier fed with manual and automatic masks. In the validation set composed of 39 liver mts, the automatic deeplearning algorithm was able to detect 82% of mts, with a median precision of 67%. Using manual and automatic masks, we obtained the same classification in 19/32 mts. In case of mts with largest diameter > 20 mm, the precision of the segmentation does not impact the classification results and we obtained the same classification with both masks. Conversely, with smaller mts, we showed that a Dice coefficient of at least 0.5 should be obtained to extract the same information from the two segmentations. This are very important results in the perspective of using radiomics-based approach to predict response to therapy into clinical practice. Indeed, either precisely manually segment all lesions or refine them after automatic segmentation is a time-consuming task that cannot be performed on a daily basis.
机译:使用CT图像预测对肝转移瘤(mts)的新辅助化疗的反应对于提供个性化治疗至关重要。但是,应避免对mts进行手动分割,以开发出可以整合到临床实践中的方法。这项研究的目的是评估自动分割是否会影响基于放疗组学的方法,以及在多大程度上会影响个体肝癌对新辅助化疗的反应。在此范围内,我们基于U-net架构开发了一种自动深度学习方法,用于对肝mts进行分割,并且我们比较了通过人工和自动口罩输入的分类器的分类结果。在由39个肝脏组成的验证集中,自动深度学习算法能够检测出82%的肝脏,中位精度为67%。使用手动和自动蒙版,我们在19/32 mts上获得了相同的分类。如果最大直径大于20 mm的mt,分割的精度不会影响分类结果,因此我们使用两个蒙版获得了相同的分类。相反,对于较小的Mts,我们表明应从DICE系数中获取至少0.5的Dice系数,以从这两个细分中提取相同的信息。在使用基于放射组学的方法预测对临床实践的治疗反应方面,这是非常重要的结果。实际上,精确地手动分割所有病变或在自动分割之后对其进行细化是一项耗时的任务,无法每天执行。

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