TY - JOUR
T1 - PodoSighter
T2 - A cloud-based tool for label-free podocyte detection in kidney whole-slide images
AU - Govind, Darshana
AU - Becker, Jan U.
AU - Miecznikowski, Jeffrey
AU - Rosenberg, Avi Z.
AU - Dang, Julien
AU - Tharaux, Pierre Louis
AU - Yacoub, Rabi
AU - Thaiss, Friedrich
AU - Hoyer, Peter F.
AU - Manthey, David
AU - Lutnick, Brendon
AU - Worral, Amber M.
AU - Mohammad, Imtiaz
AU - Walavalkar, Vighnesh
AU - Tomaszewski, John E.
AU - Jen, Kuang Yu
AU - Sarder, Pinaki
N1 - Publisher Copyright:
Copyright ß 2021 by the American Society of Nephrology
PY - 2021/11
Y1 - 2021/11
N2 - Background Podocyte depletion precedes progressive glomerular damage in several kidney diseases. However, the current standard of visual detection and quantification of podocyte nuclei from brightfield microscopy images is laborious and imprecise. Methods We have developed PodoSighter, an online cloud-based tool, to automatically identify and quantify podocyte nuclei from giga-pixel brightfield whole-slide images (WSIs) using deep learning. Ground-truth to train the tool used immunohistochemically or immunofluorescence-labeled images from a multi-institutional cohort of 122 histologic sections from mouse, rat, and human kidneys. To demonstrate the generalizability of our tool in investigating podocyte loss in clinically relevant samples, we tested it in rodent models of glomerular diseases, including diabetic kidney disease, crescentic GN, and dose-dependent direct podocyte toxicity and depletion, and in human biopsies from steroid-resistant nephrotic syndrome and from human autopsy tissues. Results The optimal model yielded high sensitivity/specificity of 0.80/0.80, 0.81/0.86, and 0.80/0.91, in mouse, rat, and human images, respectively, from periodic acid–Schiff-stained WSIs. Furthermore, the podocyte nuclear morphometrics extracted using PodoSighter were informative in identifying diseased glomeruli. We have made PodoSighter freely available to the general public as turnkey plugins in a cloud-based web application for end users. Conclusions Our study demonstrates an automated computational approach to detect and quantify podocyte nuclei in standard histologically stained WSIs, facilitating podocyte research, and enabling possible future clinical applications.
AB - Background Podocyte depletion precedes progressive glomerular damage in several kidney diseases. However, the current standard of visual detection and quantification of podocyte nuclei from brightfield microscopy images is laborious and imprecise. Methods We have developed PodoSighter, an online cloud-based tool, to automatically identify and quantify podocyte nuclei from giga-pixel brightfield whole-slide images (WSIs) using deep learning. Ground-truth to train the tool used immunohistochemically or immunofluorescence-labeled images from a multi-institutional cohort of 122 histologic sections from mouse, rat, and human kidneys. To demonstrate the generalizability of our tool in investigating podocyte loss in clinically relevant samples, we tested it in rodent models of glomerular diseases, including diabetic kidney disease, crescentic GN, and dose-dependent direct podocyte toxicity and depletion, and in human biopsies from steroid-resistant nephrotic syndrome and from human autopsy tissues. Results The optimal model yielded high sensitivity/specificity of 0.80/0.80, 0.81/0.86, and 0.80/0.91, in mouse, rat, and human images, respectively, from periodic acid–Schiff-stained WSIs. Furthermore, the podocyte nuclear morphometrics extracted using PodoSighter were informative in identifying diseased glomeruli. We have made PodoSighter freely available to the general public as turnkey plugins in a cloud-based web application for end users. Conclusions Our study demonstrates an automated computational approach to detect and quantify podocyte nuclei in standard histologically stained WSIs, facilitating podocyte research, and enabling possible future clinical applications.
UR - https://www.scopus.com/pages/publications/85119052286
U2 - 10.1681/ASN.2021050630
DO - 10.1681/ASN.2021050630
M3 - Article
C2 - 34479966
AN - SCOPUS:85119052286
SN - 1046-6673
VL - 32
SP - 2795
EP - 2813
JO - Journal of the American Society of Nephrology
JF - Journal of the American Society of Nephrology
IS - 11
ER -