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Improved ICH Classification Using Task-Dependent Learning

机译:使用任务相关学习改进了ICH分类

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Head CT is one of the most commonly performed imaging studied in the Emergency Department setting and Intracranial hemorrhage (ICH) is among the most critical and time-sensitive findings to be detected on Head CT. We present BloodNet, a deep learning architecture designed for optimal triaging of Head CTs, with the goal of decreasing the time from CT acquisition to accurate ICH detection. The BloodNet architecture incorporates dependency between the otherwise independent tasks of segmentation and classification, achieving improved classification results. AUCs of 0.9493 and 0.9566 are reported on held out positive-enriched and randomly sampled sets comprised of over 1400 studies acquired from over 10 different hospitals. These results are comparable to previously reported results with smaller number of tagged studies.
机译:头部CT是急诊科研究的最常执行的影像学之一,颅内出血(ICH)是要在头部CT上检测到的最关键且对时间最敏感的发现之一。我们提出了BloodNet,这是一种用于对头部CT进行最佳分类的深度学习架构,其目标是减少从CT采集到准确的ICH检测的时间。 BloodNet体系结构将原本独立的细分和分类任务之间的依赖合并在一起,从而获得了更好的分类结果。据报道,AUC为0.9493和0.9566,是从10多家不同医院获得的,由1400多项研究组成的,经过阳性富集并随机抽样的一组数据。这些结果与以前报道的标记研究数量较少的结果相当。

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