生物阻抗磁共振扫描高血压和功能体验

R. Kalaivani, B. Gopi, D. Ravikumar, J. Premalatha, V. P. Srinivasan, S. Renukadevi
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引用次数: 0

摘要

目前的解剖检测解决方案通常使用数据挖掘技术来使用大型注释数据集来了解解剖是如何检测的。这些解决方案受到各种限制,包括在功能开发中使用次优技术以及技术上不适当的解剖检测搜索方案的影响。为了解决这些问题,提出了一种新的模型,将识别问题重新表述为人工智能学习任务。将解剖学模型和对象研究、深度强化学习与单一行为背景下的多尺度图像处理能力相结合。这种方法测试了超过100万张图像切片,结果表明,尽管它将检测精度提高了20 - 30%,但从临床接受的角度来看,它在识别不同解剖结构方面的表现明显优于最先进的解决方案。通过2-100个数量级的检测速度比较方法,保证了大型三维扫描产生无与伦比的实时性能得到加强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bioimpedance MR Scanning For Hypertension and Functional Experience
Present anatomy detection solutions generally use data mining techniques to use large annotated datasets to learn how anatomy is detected. These solutions are subject to various constraints, including the use of suboptimal techniques in function development and the influence of technologically inappropriate anatomy detection search schemes. To deal with those problems, a process pursuing a new model in which the identification problem is reformulated as an artificial agent learning task is suggested. The anatomy model and object study with deep strengthening learning with the capabilities of multi-scale image processing in a single behavioral context are integrated. This approach tested over 1 million image slices, demonstrating that, although it increased detection precision by 20–30 percent, it dramatically outperformed state-of-the-art solutions to identify different anatomical constructions without loss from a clinical acceptance perspective. By 2–100 magnitude orders for the detection speed in comparison methods, guaranteeing that large three-dimensional scans produce unparalleled real-time performance is strengthened.
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