| Literature DB >> 36268111 |
Laxmi Gupta1, Barbara Mara Klinkhammer2, Claudia Seikrit2,3, Nina Fan1, Nassim Bouteldja1,2, Philipp Gräbel1, Michael Gadermayr1,4, Peter Boor2, Dorit Merhof1.
Abstract
Whole slide images contain a magnitude of quantitative information that may not be fully explored in qualitative visual assessments. We propose: (1) a novel pipeline for extracting a comprehensive set of visual features, which are detectable by a pathologist, as well as sub-visual features, which are not discernible by human experts and (2) perform detailed analyses on renal images from mice with experimental unilateral ureteral obstruction. An important criterion for these features is that they are easy to interpret, as opposed to features obtained from neural networks. We extract and compare features from pathological and healthy control kidneys to learn how the compartments (glomerulus, Bowman's capsule, tubule, interstitium, artery, and arterial lumen) are affected by the pathology. We define feature selection methods to extract the most informative and discriminative features. We perform statistical analyses to understand the relation of the extracted features, both individually, and in combinations, with tissue morphology and pathology. Particularly for the presented case-study, we highlight features that are affected in each compartment. With this, prior biological knowledge, such as the increase in interstitial nuclei, is confirmed and presented in a quantitative way, alongside with novel findings, like color and intensity changes in glomeruli and Bowman's capsule. The proposed approach is therefore an important step towards quantitative, reproducible, and rater-independent analysis in histopathology.Entities:
Keywords: Feature extraction; Histopathology; Pathomics
Year: 2022 PMID: 36268111 PMCID: PMC9576990 DOI: 10.1016/j.jpi.2022.100097
Source DB: PubMed Journal: J Pathol Inform