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Deep Learning for Automatic Spleen Length Measurement in Sickle Cell Disease Patients

机译:镰状细胞病患者自动脾脏长度测量深度学习

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Sickle Cell Disease (SCD) is one of the most common genetic diseases in the world. Splenomegaly (abnormal enlargement of the spleen) is frequent among children with SCD. If left untreated, splenomegaly can be life-threatening. The current workflow to measure spleen size includes palpation, possibly followed by manual length measurement in 2D ultrasound imaging. However, this manual measurement is dependent on operator expertise and is subject to intra- and inter-observer variability. We investigate the use of deep learning to perform automatic estimation of spleen length from ultrasound images. We investigate two types of approach, one segmentation-based and one based on direct length estimation, and compare the results against measurements made by human experts. Our best model (segmentation-based) achieved a percentage length error of 7.42%, which is approaching the level of inter-observer variability (5.47%-6.34%). To the best of our knowledge, this is the first attempt to measure spleen size in a fully automated way from ultrasound images.
机译:镰状细胞疾病(SCD)是世界上最常见的遗传疾病之一。 SCD的儿童频繁脾肿大(脾脏的异常扩大)。如果没有治疗,脾肿大可能会危及生命。测量脾尺寸的当前工作流程包括触诊,可能在2D超声成像中进行手动长度测量。但是,本手动测量取决于操作员专业知识,并受OREARAL和INTER-OBER-OR间变异性。我们调查了深度学习的使用,从超声图像执行脾长的自动估计。我们研究了两种类型的方法,基于直接长度估计,并将结果与​​人类专家进行的测量结果进行比较。我们的最佳型号(基于分段)实现了7.42%的百分比长度误差,这是接近观察者间变异性的水平(5.47%-6.34%)。据我们所知,这是第一次尝试以超声图像以完全自动化的方式测量脾脏大小的尝试。

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