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High-throughput quantitative histology in systemic sclerosis skin disease using computer vision

机译:计算机视觉中系统硬化皮肤病的高通量定量组织学

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Skin fibrosis is the clinical hallmark of systemic sclerosis (SSc), where collagen deposition and remodeling of the dermis occur over time. The most widely used outcome measure in SSc clinical trials is the modified Rodnan skin score (mRSS), which is a semi-quantitative assessment of skin stiffness at seventeen body sites. However, the mRSS is confounded by obesity, edema, and high inter-rater variability. In order to develop a new histopathological outcome measure for SSc, we applied a computer vision technology called a deep neural network (DNN) to stained sections of SSc skin. We tested the hypotheses that DNN analysis could reliably assess mRSS and discriminate SSc from normal skin. We analyzed biopsies from two independent (primary and secondary) cohorts. One investigator performed mRSS assessments and forearm biopsies, and trichrome-stained biopsy sections were photomicrographed. We used the AlexNet DNN to generate a numerical signature of 4096 quantitative image features (QIFs) for 100 randomly selected dermal image patches/biopsy. In the primary cohort, we used principal components analysis (PCA) to summarize the QIFs into a Biopsy Score for comparison with mRSS. In the secondary cohort, using QIF signatures as the input, we fit a logistic regression model to discriminate between SSc vs. control biopsy, and a linear regression model to estimate mRSS, yielding Diagnostic Scores and Fibrosis Scores, respectively. We determined the correlation between Fibrosis Scores and the published Scleroderma Skin Severity Score (4S) and between Fibrosis Scores and longitudinal changes in mRSS on a per patient basis. In the primary cohort (n?=?6, 26 SSc biopsies), Biopsy Scores significantly correlated with mRSS (R?=?0.55, p?=?0.01). In the secondary cohort (n?=?60 SSc and 16 controls, 164 biopsies; divided into 70% training and 30% test sets), the Diagnostic Score was significantly associated with SSc-status (misclassification rate?=?1.9% [training], 6.6% [test]), and the Fibrosis Score significantly correlated with mRSS (R?=?0.70 [training], 0.55 [test]). The DNN-derived Fibrosis Score significantly correlated with 4S (R?=?0.69, p?=?3?×?10??17). DNN analysis of SSc biopsies is an unbiased, quantitative, and reproducible outcome that is associated with validated SSc outcomes.
机译:皮肤纤维化是全身硬化症(SSC)的临床标志,其中胶原沉积和真皮的重塑随时间发生。 SSC临床试验中最广泛使用的结果措施是修饰的Rodnan皮肤分数(MRSS),这是对十七个身体部位的皮肤僵硬的半定量评估。然而,MRSS由肥胖,水肿和高帧间变异性混淆。为了开发SSC的新组织病理结果措施,我们应用了一种称为深度神经网络(DNN)的计算机视觉技术,染色SSC皮肤。我们测试了DNN分析可以可靠地评估MRS的假设,并从正常皮肤中区分SSC。我们分析了来自两个独立(初级和二级)队列的活检。一名研究者进行了MRSS评估和前臂活组织检查,染色体染色的活组织检查部分是显微照片的。我们使用AlexNet DNN为100个随机选择的真皮图像贴片/活检产生4096定量图像特征(QIFS)的数值签名。在主要的队列中,我们使用主成分分析(PCA)将QIF汇总为活组织检查分数,以便与MRSS进行比较。在二级队列中,使用QIF签名作为输入,我们适合逻辑回归模型以区分SSC与控制活检,以及线性回归模型,以估计MRSS,分别产生诊断得分和纤维化分数。我们确定纤维化分数与发表的硬皮病皮肤严重程度(4s)之间的相关性,以及纤维化分数和MRSS的纵向变化。在初级队列(n?= 6,26 ssc活检)中,活组织检查分数与MRSS显着相关(r?= 0.55,p?= 0.01)。在次要队列(n?= 60 ssc和16个控制,164个活组织检查;分为70%的训练和30%的测试集),诊断得分与SSC状态显着相关(错误分类率?=?1.9%[培训],6.6%[测试]),纤维化分数与MRSS显着相关(R?= 0.70 [训练],0.55 [测试])。 DNN衍生的纤维化分数与4s显着相关(r?= 0.69,p?3?×10 ?? 17)。 SSC活组织检查的DNN分析是与验证的SSC结果相关的无偏异,定量和可重复的结果。

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