利用侧流暗场成像对脓毒症微循环进行图形化表征

Jihan M. Zoghbi, Leandro T. De La Cruz, Miguel A. Galarreta-Valverde, M. Jackowski, J. Vieira, A. Liberatore, I. Koh
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引用次数: 2

摘要

视频数据脓毒症实时检测是一项新的技术,可以帮助脓毒症患者,降低高死亡率。脓毒症患者微循环的进行性损害与全身炎症反应的增加有关,这被认为是导致死亡的多器官功能障碍综合征的起源。然而,尽管人们认识到微循环功能障碍的重要性,但能够将败血症严重程度与便携式显微镜侧流暗场成像(SDF)捕获的微循环动力学损害程度相关联的分析方法很少使用。因此,通过分析微循环功能障碍对脓毒症的严重程度进行分类,将对脓毒症的严重程度诊断和治疗管理有很大的帮助。在这种情况下,这项工作的目的是提出一种新的基于图像处理的计算方法,以获得用于确定败血症引起的微血管和组织承诺程度的图形度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Based Characterization of Microcirculation in Sepsis Using Sidestream Dark Field Imaging
Real-time detection of sepsis on a video data is a new aboard technique that aids the septic patient and decreases the high mortality rate. The progressive impairment of the micro-circulation associated with increased systemic inflammatory response in sepsis has been considered the origin of the multiple organ dysfunction syndrome that often leads to death. However, despite the recognized importance of the micro-circulatory dysfunction, analysis methods able to correlate the severity of sepsis with the degree of impairment of micro-hemodynamic captured by portable microscope Side-stream Dark Field Imaging (SDF) are rarely used. Hence, the classification of the severity of sepsis by analyzing the micro-circulatory dysfunction would be of great assistance in diagnosing severity and therapeutic management. In this context, the aim of this work is to propose a new computational methodology based on image processing to obtain graph metrics for determining the degree of micro-vascular and tissue commitment due to sepsis.
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