Unsupervised machine learning for identifying important visual features through bag-of-words using histopathology data from chronic kidney disease

Abstract

Pathologists use visual classification to assess patient kidney biopsy samples when diagnosing the underlying cause of kidney disease. However, the assessment is qualitative, or semi-quantitative at best, and reproducibility is challenging. To discover previously unknown features which predict patient outcomes and overcome substantial interobserver variability, we developed an unsupervised bag-of-words model. Our study applied to the C-PROBE cohort of patients with chronic kidney disease (CKD). 107,471 histopathology images were obtained from 161 biopsy cores and identified important morphological features in biopsy tissue that are highly predictive of the presence of CKD both at the time of biopsy and in one year. To evaluate the performance of our model, we estimated the AUC and its 95% confidence interval. We show that this method is reliable and reproducible and can achieve 0.93 AUC at predicting glomerular filtration rate at the time of biopsy as well as predicting a loss of function at one year. Additionally, with this method, we ranked the identified morphological features according to their importance as diagnostic markers for chronic kidney disease. In this study, we have demonstrated the feasibility of using an unsupervised machine learning method without human input in order to predict the level of kidney function in CKD. The results from our study indicate that the visual dictionary, or visual image pattern, obtained from unsupervised machine learning can predict outcomes using machine-derived values that correspond to both known and unknown clinically relevant features.

Document Details

Document Type
Pub Defense Publication
Publication Date
Mar 22, 2022
Source ID
10.1038/s41598-022-08974-8

Entities

People

  • Arvind Rao
  • Crystal Gadegbeku
  • Debbie Gipson
  • Elisa Warner
  • Jeffrey B. Hodgin
  • Jharna Saha
  • Jinghui Luo
  • Joonsang Lee
  • Kalyani Perumal
  • Keith Bellovich
  • Laura Mariani
  • Markus Bitzer
  • Matthias Kretzler
  • Salma Shaikhouni
  • Subramaniam Pennathur
  • Susan Massengill
  • The C-probe Study
  • Xin Zhang
  • Yingbao Yang
  • Zeenat Bhat

Organizations

  • National Cancer Institute
  • United States Department of Defense

Tags

Fields of Study

  • Computer science
  • Medicine

Readers

  • Cardiovascular Physiology
  • Neural Network Machine Learning.
  • Oncology and Biomarker-Based Cancer Detection.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Neural Networks