Quantifying acute kidney injury in an Ischaemia-Reperfusion Injury mouse model using deep-learning-based semantic segmentation in histology

Author:

Luchian Andreea1ORCID,Cepeda Katherine Trivino23ORCID,Harwood Rachel4ORCID,Murray Patricia23ORCID,Wilm Bettina23ORCID,Kenny Simon4ORCID,Pregel Paola5ORCID,Ressel Lorenzo1ORCID

Affiliation:

1. Institute of Infection, Veterinary and Ecological Sciences, Faculty of Health & Life Sciences, University of Liverpool 1 Department of Veterinary Anatomy Physiology and Pathology , , Liverpool, CH64 7TE , UK

2. Institute of Systems, Molecular and Integrative Biology, University of Liverpool 2 Department of Molecular Physiology and Cell Signalling , , Liverpool, L69 7BE , UK

3. Centre for Pre-clinical Imaging, Institute of Systems, Molecular and Integrative Biology, University of Liverpool 3 , Liverpool, L69 7TX , UK

4. Alder Hey in the Park 4 Department of Paediatric Surgery , , Liverpool, L14 5AB , UK

5. University of Turin 5 Department of Veterinary Sciences , , Turin, 8-10124 , Italy

Abstract

ABSTRACT This study focuses on ischaemia-reperfusion injury (IRI) in kidneys, a cause of acute kidney injury (AKI) and end-stage kidney disease (ESKD). Traditional kidney damage assessment methods are semi-quantitative and subjective. This study aims to use a convolutional neural network (CNN) to segment murine kidney structures after IRI, quantify damage via CNN-generated pathological measurements, and compare this to conventional scoring. The CNN was able to accurately segment the different pathological classes, such as Intratubular casts and Tubular necrosis, with an F1 score of over 0.75. Some classes, such as Glomeruli and Proximal tubules, had even higher statistical values with F1 scores over 0.90. The scoring generated based on the segmentation approach statistically correlated with the semiquantitative assessment (Spearman’s rank correlation coefficient=0.94). The heatmap approach localised the intratubular necrosis mainly in the outer stripe of the outer medulla, while the tubular casts were also present in more superficial or deeper portions of the cortex and medullary areas. This study presents a CNN model capable of segmenting multiple classes of interest, including acute IRI-specific pathological changes, in a whole mouse kidney section and can provide insights into the distribution of pathological classes within the whole mouse kidney section.

Funder

University of Liverpool

Publisher

The Company of Biologists

Subject

General Agricultural and Biological Sciences,General Biochemistry, Genetics and Molecular Biology

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