Optimization of Deep Learning Based Brain Extraction in MRI for Low Resource Environments.

Siddhesh P Thakur, Sarthak Pati, Ravi Panchumarthy, Deepthi Karkada, Junwen Wu, Dmitry Kurtaev, Chiharu Sako, Prashant Shah, Spyridon Bakas
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引用次数: 3

Abstract

Brain extraction is an indispensable step in neuro-imaging with a direct impact on downstream analyses. Most such methods have been developed for non-pathologically affected brains, and hence tend to suffer in performance when applied on brains with pathologies, e.g., gliomas, multiple sclerosis, traumatic brain injuries. Deep Learning (DL) methodologies for healthcare have shown promising results, but their clinical translation has been limited, primarily due to these methods suffering from i) high computational cost, and ii) specific hardware requirements, e.g., DL acceleration cards. In this study, we explore the potential of mathematical optimizations, towards making DL methods amenable to application in low resource environments. We focus on both the qualitative and quantitative evaluation of such optimizations on an existing DL brain extraction method, designed for pathologically-affected brains and agnostic to the input modality. We conduct direct optimizations and quantization of the trained model (i.e., prior to inference on new data). Our results yield substantial gains, in terms of speedup, latency, through-put, and reduction in memory usage, while the segmentation performance of the initial and the optimized models remains stable, i.e., as quantified by both the Dice Similarity Coefficient and the Hausdorff Distance. These findings support post-training optimizations as a promising approach for enabling the execution of advanced DL methodologies on plain commercial-grade CPUs, and hence contributing to their translation in limited- and low- resource clinical environments.

Abstract Image

Abstract Image

低资源环境下基于深度学习的MRI脑提取优化。
脑提取是神经成像中不可缺少的一步,对后续分析有直接影响。大多数这样的方法都是为非病理影响的大脑开发的,因此当应用于具有病理的大脑时,例如胶质瘤,多发性硬化症,创伤性脑损伤,往往会受到影响。用于医疗保健的深度学习(DL)方法已经显示出有希望的结果,但其临床应用受到限制,主要原因是这些方法存在以下问题:1)计算成本高;2)特定的硬件要求,例如DL加速卡。在这项研究中,我们探索了数学优化的潜力,使深度学习方法适用于低资源环境。我们专注于对现有DL脑提取方法的这种优化进行定性和定量评估,该方法是为病理影响的大脑设计的,与输入模式无关。我们对训练模型进行直接优化和量化(即,在对新数据进行推理之前)。我们的结果在加速、延迟、吞吐量和内存使用减少方面产生了实质性的收益,而初始模型和优化模型的分割性能保持稳定,即通过Dice相似系数和Hausdorff距离进行量化。这些发现支持训练后优化作为一种有前途的方法,可以在普通商业级cpu上执行高级深度学习方法,从而有助于在有限和低资源的临床环境中进行翻译。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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