Oezdemir Ipek, Peng Jun, Ghosh Debabrata, Sirsi Shashank, Mineo Chieko, Shaul Philip W, Hoyt Kenneth
University of Texas at Dallas, Department of Bioengineering, Richardson, Texas, United States.
University of Texas Southwestern Medical Center, Department of Pediatrics, Dallas, Texas, United States.
J Med Imaging (Bellingham). 2020 May;7(3):034001. doi: 10.1117/1.JMI.7.3.034001. Epub 2020 Jun 2.
Impaired insulin-induced microvascular recruitment in skeletal muscle contributes to insulin resistance in type 2 diabetic disease. Previously, quantification of microvascular recruitment at the capillary level has been performed with either the full image or manually selected region-of-interests. These subjective approaches are imprecise, time-consuming, and unsuitable for automated processes. Here, an automated multiscale image processing approach was performed by defining a vessel diameter threshold for an objective and reproducible analysis at the microvascular level. A population of C57BL/6J male mice fed standard chow and studied at age 13 to 16 weeks comprised the lean group and 24- to 31-week-old mice who received a high-fat diet were designated the obese group. A clinical ultrasound scanner (Acuson Sequoia 512) equipped with an 15L8-S linear array transducer was used in a nonlinear imaging mode for sensitive detection of an intravascular microbubble contrast agent. By eliminating large vessels from the dynamic contrast-enhanced ultrasound (DCE-US) images (above in diameter), obesity-related changes in perfusion and morphology parameters were readily detected in the smaller vessels, which are known to have a greater impact on skeletal muscle glucose disposal. The results from the DCE-US images including all of the vessels were compared for three different-sized vessel groups, namely, vessels smaller than 300, 200, and in diameter. Our automated image processing provides objective and reproducible results by focusing on a particular size of vessel, thereby allowing for a selective evaluation of longitudinal changes in microvascular recruitment for a specific-sized vessel group between diseased and healthy microvascular networks.
胰岛素诱导的骨骼肌微血管募集受损是2型糖尿病胰岛素抵抗的原因之一。此前,在毛细血管水平上对微血管募集的量化是通过全图像或手动选择的感兴趣区域来进行的。这些主观方法不准确、耗时,且不适用于自动化流程。在此,通过定义血管直径阈值,采用一种自动化多尺度图像处理方法,以便在微血管水平进行客观且可重复的分析。喂食标准饲料并在13至16周龄进行研究的C57BL/6J雄性小鼠群体构成瘦组,而接受高脂饮食的24至31周龄小鼠被指定为肥胖组。一台配备15L8 - S线性阵列换能器的临床超声扫描仪(Acuson Sequoia 512)以非线性成像模式用于敏感检测血管内微泡造影剂。通过从动态对比增强超声(DCE - US)图像中排除大血管(直径大于 ),在已知对骨骼肌葡萄糖处置有更大影响的较小血管中很容易检测到与肥胖相关的灌注和形态参数变化。对包括所有血管的DCE - US图像结果针对三种不同大小的血管组进行了比较,即直径小于300、200和 的血管。我们的自动化图像处理通过聚焦于特定大小的血管提供了客观且可重复的结果,从而能够对患病和健康微血管网络之间特定大小血管组的微血管募集纵向变化进行选择性评估。