Computer-Assisted Mitotic Count Using a Deep Learning-based Algorithm Improves Inter-Observer Reproducibility and Accuracy in canine cutaneous mast cell tumors

Author:

Bertram Christof AORCID,Aubreville MarcORCID,Donovan Taryn AORCID,Bartel AlexanderORCID,Wilm FraukeORCID,Marzahl ChristianORCID,Assenmacher Charles-AntoineORCID,Becker Kathrin,Bennett Mark,Corner Sarah,Cossic Brieuc,Denk Daniela,Dettwiler Martina,Gonzalez Beatriz Garcia,Gurtner Corinne,Haverkamp Ann-Kathrin,Heier Annabelle,Lehmbecker Annika,Merz Sophie,Noland Erica L,Plog Stephanie,Schmidt Anja,Sebastian Franziska,Sledge Dodd G,Smedley Rebecca C,Tecilla Marco,Thaiwong Tuddow,Fuchs-Baumgartinger Andrea,Meuten Don J,Breininger Katharina,Kiupel Matti,Maier Andreas,Klopfleisch Robert

Abstract

The mitotic count (MC) is an important histological parameter for prognostication of malignant neoplasms. However, it has inter- and intra-observer discrepancies due to difficulties in selecting the region of interest (MC-ROI) and in identifying/classifying mitotic figures (MFs). Recent progress in the field of artificial intelligence has allowed the development of high-performance algorithms that may improve standardization of the MC. As algorithmic predictions are not flawless, the computer-assisted review by pathologists may ensure reliability. In the present study we have compared partial (MC-ROI preselection) and full (additional visualization of MF candidate proposal and display of algorithmic confidence values) computer-assisted MC analysis to the routine (unaided) MC analysis by 23 pathologists for whole slide images of 50 canine cutaneous mast cell tumors (ccMCTs). Algorithmic predictions aimed to assist pathologists in detecting mitotic hotspot locations, reducing omission of MF and improving classification against imposters. The inter-observer consistency for the MC significantly increased with computer assistance (interobserver correlation coefficient, ICC = 0.92) compared to the unaided approach (ICC = 0.70). Classification into prognostic stratifications had a higher accuracy with computer assistance. The algorithmically preselected MC-ROIs had a consistently higher MCs than the manually selected MC-ROIs. Compared to a ground truth (developed with immunohistochemistry for phosphohistone H3), pathologist performance in detecting individual MF was augmented when using computer assistance (F1-score of 0.68 increased to 0.79) with a reduction in false negatives by 38%. The results of this study prove that computer assistance may lead to a more reproducible and accurate MCs in ccMCTs.

Publisher

Cold Spring Harbor Laboratory

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1. Assessing Domain Adaptation Techniques for Mitosis Detection in Multi-scanner Breast Cancer Histopathology Images;Biomedical Image Registration, Domain Generalisation and Out-of-Distribution Analysis;2022

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