4.7 Article

Computational Segmentation and Classification of Diabetic Glomerulosclerosis

Journal

JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY
Volume 30, Issue 10, Pages 1953-1967

Publisher

AMER SOC NEPHROLOGY
DOI: 10.1681/ASN.2018121259

Keywords

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Funding

  1. Jacobs School of Medicine and Biomedical Sciences, University at Buffalo
  2. Innovative Micro-Programs Accelerating Collaboration in Themes (IMPACT) award
  3. National Institute of Diabetes and Digestive and Kidney Diseases (NIDDK) Diabetic Complications Consortium [DK076169]
  4. NIDDK [R01 DK114485]

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Background Pathologists use visual classification of glomerular lesions to assess samples from patients with diabetic nephropathy (DN). The results may vary among pathologists. Digital algorithms may reduce this variability and provide more consistent image structure interpretation. Methods We developed a digital pipeline to classify renal biopsies from patients with DN. We combined traditional image analysis with modern machine learning to efficiently capture important structures, minimize manual effort and supervision, and enforce biologic prior information onto our model. To computationally quantify glomerular structure despite its complexity, we simplified it to three components consisting of nuclei, capillary lumina and Bowman spaces; and Periodic Acid-Schiff positive structures. We detected glomerular boundaries and nuclei from whole slide images using convolutional neural networks, and the remaining glomerular structures using an unsupervised technique developed expressly for this purpose. We defined a set of digital features which quantify the structural progression of DN, and a recurrent network architecture which processes these features into a classification. Results Our digital classification agreed with a senior pathologist whose classifications were used as ground truth with moderate Cohen's kappa kappa = 0.55 and 95% confidence interval [0.50, 0.60]. Two other renal pathologists agreed with the digital classification with kappa(1) = 0.68, 95% interval [0.50, 0.86] and kappa(2) = 0.48, 95% interval [0.32, 0.64]. Our results suggest computational approaches are comparable to human visual classification methods, and can offer improved precision in clinical decision workflows. We detected glomerular boundaries from whole slide images with 0.93 +/- 0.04 balanced accuracy, glomerular nuclei with 0.94 sensitivity and 0.93 specificity, and glomerular structural components with 0.95 sensitivity and 0.99 specificity. Conclusions Computationally derived, histologic image features hold significant diagnostic information that may augment clinical diagnostics.

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