Clinical Relevance of Computationally Derived Tubular Features: Spatial Relationships and the Development of Tubulointerstitial Scarring in MCD/FSGS

Fan Fan, Qian Liu, Jarcy Zee, Takaya Ozeki, Dawit Demeke, Yingbao Yang, Alton B Farris, Bangchen Wang, Manav Shah, Jackson Jacobs, Laura Mariani, Kyle Lafata, Jeremy Rubin, Yijiang Chen, Lawrence Holzman, Jeffrey B Hodgin, Anant Madabhushi, Laura Barisoni, Andrew Janowczyk
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Abstract

Background Visual scoring of tubular damage has limitations in capturing the full spectrum of structural changes and prognostic potential. We investigate if computationally quantified tubular features can enhance prognostication and reveal spatial relationships with interstitial fibrosis. Methods Deep-learning and image-processing-based segmentations were employed in N=254/266 PAS-WSIs from the NEPTUNE/CureGN datasets (135/153 focal segmental glomerulosclerosis and 119/113 minimal change disease) for: cortex, tubular lumen (TL), epithelium (TE), nuclei (TN), and basement membrane (TBM). N=104 pathomic features were extracted from these segmented tubular substructures and summarized at the patient level using summary statistics. The tubular features were quantified across the biopsy and in manually segmented regions of mature interstitial fibrosis and tubular atrophy (IFTA), pre-IFTA and non-IFTA in the NEPTUNE dataset. Minimum Redundancy Maximum Relevance was used in the NEPTUNE dataset to select features most associated with disease progression and proteinuria remission. Ridge-penalized Cox models evaluated their predictive discrimination compared to clinical/demographic data and visual-assessment. Models were evaluated in the CureGN dataset. Results N=9 features were predictive of disease progression and/or proteinuria remission. Models with tubular features had high prognostic accuracy in both NEPTUNE and CureGN datasets and increased prognostic accuracy for both outcomes (5.6%-7.7% and 1.6%-4.6% increase for disease progression and proteinuria remission, respectively) compared to conventional parameters alone in the NEPTUNE dataset. TBM thickness/area and TE simplification progressively increased from non- to pre- and mature IFTA. Conclusions Previously under-recognized, quantifiable, and clinically relevant tubular features in the kidney parenchyma can enhance understanding of mechanisms of disease progression and risk stratification.
计算得出的输尿管特征的临床意义:空间关系与 MCD/FSGS 中输卵管间质瘢痕的发展
背景肾小管损伤的视觉评分在捕捉结构变化的全貌和预后潜力方面存在局限性。我们研究了计算量化的肾小管特征是否能加强预后并揭示与间质纤维化的空间关系。方法在 NEPTUNE/CureGN 数据集(135/153 局灶节段性肾小球硬化和 119/113 微小病变)中的 N=254/266 PAS-WSIs 中采用了基于深度学习和图像处理的分割,包括:皮质、肾小管管腔(TL)、上皮(TE)、细胞核(TN)和基底膜(TBM)。从这些分割的肾小管子结构中提取出 N=104 个病理特征,并使用汇总统计在患者层面进行总结。在 NEPTUNE 数据集中,对整个活检和人工分割的成熟间质纤维化和肾小管萎缩(IFTA)、IFTA 前和非 IFTA 区域的肾小管特征进行了量化。在 NEPTUNE 数据集中采用了最小冗余度最大相关性的方法来选择与疾病进展和蛋白尿缓解最相关的特征。与临床/人口学数据和目测评估相比,脊髓校正 Cox 模型评估了其预测辨别力。模型在 CureGN 数据集中进行了评估。结果N=9个特征可预测疾病进展和/或蛋白尿缓解。在 NEPTUNE 和 CureGN 数据集中,具有肾小管特征的模型具有较高的预后准确性,与 NEPTUNE 数据集中单独的传统参数相比,两种结果的预后准确性都有所提高(疾病进展和蛋白尿缓解的准确性分别提高了 5.6%-7.7% 和 1.6%-4.6% )。结论肾实质中以前未得到充分认识的、可量化的、与临床相关的肾小管特征可以加深对疾病进展和风险分层机制的理解。
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