Basran P S, DiLeo C, Zhang Y, Porter I R, Wieland M
Department of Clinical Sciences, College of Veterinary Medicine, Cornell University, Ithaca, NY 14853.
College of Veterinary Medicine, Cornell University, Ithaca, NY 14853.
JDS Commun. 2022 Feb 10;3(2):132-137. doi: 10.3168/jdsc.2021-0179. eCollection 2022 Mar.
We describe a novel approach for analyzing thermal images by way of radiomics (i.e., thermal radiomics) and how it can be used to monitor short-term temperature changes of dairy cow hind teats; that is, delta thermal radiomics. The heat generated from metabolic activities and blood-flow patterns can be visualized using thermal radiography of the skin surface. The hind teats from 25 dairy cows were imaged with a digital thermal camera and the images were converted to medical images (DICOM format) by mapping the multi-channel colorized thermal image to a monochromatic image whose intensities represent temperature. The 50 teats (left and right hind) were then manually segmented by 2 investigators. Radiomics analysis, which is a common method of extracting semantic and nonsemantic image biomarkers from medical images for machine learning, was performed. To evaluate whether this approach can detect pre- and postmilking differences, 18 cows were imaged before and after milking, the teats were manually segmented, and radiomic calculations were performed. Student's -test was used to provide an estimate of the likelihood of whether postmilking thermal image biomarkers are the same as premilking thermal image biomarkers, and Cohen's was used to evaluate the size of the effect ( > 1.2). To evaluate uncertainties from manual segmentation, the Dice similarity score (DS) between the 2 investigators' segments was computed. The average DS (95% confidence limit) was 0.952 (0.913-0.982) when comparing the 2 investigators' segmentations. There was no significant difference in DS when comparing the left and right segmented teats, suggesting that teats can be segmented consistently. No differences ( < 0.36) were observed when comparing image biomarkers from one investigator's segments with the other's, suggesting that image biomarkers computed from one investigator's segmentation of teats are not likely to differ from those computed from the other investigator. When comparing image biomarkers before and after milking, 109 image biomarkers were analyzed, and 17 image biomarkers were simultaneously significant and exhibited effect size. Thus, delta thermal radiomics offers a noninvasive and quantitative method of monitoring skin temperature changes in humans and animals after an intervention. The advantage of this approach is that it can reveal both perceptible and imperceptible surface temperature features that may be useful for detecting and managing dairy teat health.
我们描述了一种通过放射组学(即热放射组学)分析热图像的新方法,以及如何利用该方法监测奶牛后乳头的短期温度变化,即增量热放射组学。代谢活动和血流模式产生的热量可以通过皮肤表面的热成像来可视化。使用数字热成像相机对25头奶牛的后乳头进行成像,并通过将多通道彩色热图像映射到强度代表温度的单色图像,将图像转换为医学图像(DICOM格式)。然后由两名研究人员手动分割这50个乳头(左右后乳头)。进行了放射组学分析,这是一种从医学图像中提取语义和非语义图像生物标志物用于机器学习的常用方法。为了评估这种方法是否能够检测挤奶前后的差异,对18头奶牛在挤奶前后进行成像,手动分割乳头,并进行放射组学计算。使用学生t检验来估计挤奶后热图像生物标志物与挤奶前热图像生物标志物相同的可能性,使用科恩效应量来评估效应大小(>1.2)。为了评估手动分割带来的不确定性,计算了两名研究人员分割结果之间的骰子相似性得分(DS)。比较两名研究人员的分割结果时,平均DS(95%置信区间)为0.952(0.913 - 0.982)。比较左右分割乳头时,DS没有显著差异,表明乳头可以被一致地分割。比较一名研究人员分割的乳头图像生物标志物与另一名研究人员的结果时,未观察到差异(<0.36),这表明由一名研究人员分割乳头计算得到的图像生物标志物不太可能与另一名研究人员计算得到的不同。比较挤奶前后的图像生物标志物时,分析了109个图像生物标志物,其中17个图像生物标志物同时具有显著性且表现出效应大小。因此,增量热放射组学提供了一种在干预后监测人和动物皮肤温度变化的非侵入性定量方法。这种方法的优点是它可以揭示可感知和不可感知的表面温度特征,这可能有助于检测和管理奶牛乳头健康。