Chen Yijiang, Wang Bangchen, Demeke Dawit, Fan Fan, Berthier Celine, Mariani Laura, Lafata Kyle, Holzman Lawrence, Hodgin Jeffrey, Janowczyk Andrew, Barisoni Laura, Madabhushi Anant
Department of Radiation Oncology, Stanford University School of Medicine, Stanford, California, USA.
Department of Biomedical Engineering, Case Western Reserve University, Cleveland, OH, USA.
Clin J Am Soc Nephrol. 2024 Dec 23;20(2):239-55. doi: 10.2215/CJN.0000000597.
Interstitial fibrosis and tubular atrophy (IFTA), and density and shape of peritubular capillaries (PTCs), are independently prognostic of disease progression. This study aimed to identify novel digital biomarkers of disease progression and assess the clinical relevance of the interplay between a variety of PTC characteristics and their microenvironment in glomerular diseases.
A total of 344 NEPTUNE/CureGN participants were included: 112 minimal change disease, 134 focal segmental glomerulosclerosis, 61 membranous nephropathy, and 37 IgA nephropathy. A PAS-stained whole slide image per patient was manually segmented for cortex, pre- and mature IFTA. Interstitial fractional space (IFS) was computationally quantified. A deep-learning model was applied to segment PTCs. Spatial and shape PTC pathomic features (230) were extracted from the cortex, IFTA, and non-IFTA sub-regions. Participants were divided into training and testing datasets (1:1). Univariate models incorporating IFTA subregions, and IFS-PTC density were constructed. LASSO regression models were used to identify the top PTC features associated with disease progression stratified by IFTA and non-IFTA sub-regions. Machine learning models were built using the top PTC features in IFTA and non-IFTA sub-regions to prognosticate disease progression.
PTC density in pre+mature IFTA and IFS, shape features in pre+mature IFTA, and spatial architecture features in the non-IFTA regions associated with disease progression. The machine learning generated risk scores showed a significant association with disease progression on the independent testing set.
We uncovered previously underrecognized digital biomarkers of disease progression and the clinical relevance of the complex interplay between the status of the PTCs and the interstitial microenvironment.
间质纤维化和肾小管萎缩(IFTA)以及肾小管周围毛细血管(PTC)的密度和形态是疾病进展的独立预后指标。本研究旨在识别疾病进展的新型数字生物标志物,并评估各种PTC特征与其微环境之间的相互作用在肾小球疾病中的临床相关性。
共纳入344名NEPTUNE/CureGN参与者:112例微小病变病、134例局灶节段性肾小球硬化、61例膜性肾病和37例IgA肾病。对每位患者的一张PAS染色全切片图像进行手动分割,以区分皮质、前期和成熟IFTA。通过计算定量间质分数空间(IFS)。应用深度学习模型分割PTC。从皮质、IFTA和非IFTA子区域提取空间和形态PTC病理特征(230个)。参与者被分为训练和测试数据集(1:1)。构建了纳入IFTA子区域和IFS-PTC密度的单变量模型。使用LASSO回归模型识别与IFTA和非IFTA子区域分层的疾病进展相关的顶级PTC特征。使用IFTA和非IFTA子区域中的顶级PTC特征构建机器学习模型,以预测疾病进展。
前期+成熟IFTA中的PTC密度和IFS、前期+成熟IFTA中的形态特征以及非IFTA区域中的空间结构特征与疾病进展相关。机器学习生成的风险评分在独立测试集上与疾病进展显著相关。
我们发现了先前未被充分认识的疾病进展数字生物标志物,以及PTC状态与间质微环境之间复杂相互作用的临床相关性。