Literature DB >> 34022486

Comparison of metrics for the evaluation of medical segmentations using prostate MRI dataset.

Ying-Hwey Nai1, Bernice W Teo2, Nadya L Tan3, Sophie O'Doherty4, Mary C Stephenson5, Yee Liang Thian6, Edmund Chiong7, Anthonin Reilhac4.   

Abstract

Nine previously proposed segmentation evaluation metrics, targeting medical relevance, accounting for holes, and added regions or differentiating over- and under-segmentation, were compared with 24 traditional metrics to identify those which better capture the requirements for clinical segmentation evaluation. Evaluation was first performed using 2D synthetic shapes to highlight features and pitfalls of the metrics with known ground truths (GTs) and machine segmentations (MSs). Clinical evaluation was then performed using publicly-available prostate images of 20 subjects with MSs generated by 3 different deep learning networks (DenseVNet, HighRes3DNet, and ScaleNet) and GTs drawn by 2 readers. The same readers also performed the 2D visual assessment of the MSs using a dual negative-positive grading of -5 to 5 to reflect over- and under-estimation. Nine metrics that correlated well with visual assessment were selected for further evaluation using 3 different network ranking methods - based on a single metric, normalizing the metric using 2 GTs, and ranking the network based on a metric then averaging, including leave-one-out evaluation. These metrics yielded consistent ranking with HighRes3DNet ranked first then DenseVNet and ScaleNet using all ranking methods. Relative volume difference yielded the best positivity-agreement and correlation with dual visual assessment, and thus is better for providing over- and under-estimation. Interclass Correlation yielded the strongest correlation with the absolute visual assessment (0-5). Symmetric-boundary dice consistently yielded good discrimination of the networks for all three ranking methods with relatively small variations within network. Good rank discrimination may be an additional metric feature required for better network performance evaluation.
Copyright © 2021 The Author(s). Published by Elsevier Ltd.. All rights reserved.

Keywords:  Deep learning; Evaluation metrics; Medical image segmentation; Prostate cancer; Rank evaluation

Year:  2021        PMID: 34022486     DOI: 10.1016/j.compbiomed.2021.104497

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  4 in total

1.  Brain tumor segmentation in MRI images using nonparametric localization and enhancement methods with U-net.

Authors:  Boran Sekeroglu; Rahib Abiyev; Ahmet Ilhan
Journal:  Int J Comput Assist Radiol Surg       Date:  2022-01-29       Impact factor: 2.924

2.  Selective identification and localization of indolent and aggressive prostate cancers via CorrSigNIA: an MRI-pathology correlation and deep learning framework.

Authors:  Indrani Bhattacharya; Arun Seetharaman; Christian Kunder; Wei Shao; Leo C Chen; Simon J C Soerensen; Jeffrey B Wang; Nikola C Teslovich; Richard E Fan; Pejman Ghanouni; James D Brooks; Geoffrey A Sonn; Mirabela Rusu
Journal:  Med Image Anal       Date:  2021-11-06       Impact factor: 8.545

Review 3.  Towards a guideline for evaluation metrics in medical image segmentation.

Authors:  Dominik Müller; Iñaki Soto-Rey; Frank Kramer
Journal:  BMC Res Notes       Date:  2022-06-20

4.  Schistoscope: An Automated Microscope with Artificial Intelligence for Detection of Schistosoma haematobium Eggs in Resource-Limited Settings.

Authors:  Prosper Oyibo; Satyajith Jujjavarapu; Brice Meulah; Tope Agbana; Ingeborg Braakman; Angela van Diepen; Michel Bengtson; Lisette van Lieshout; Wellington Oyibo; Gleb Vdovine; Jan-Carel Diehl
Journal:  Micromachines (Basel)       Date:  2022-04-19       Impact factor: 3.523

  4 in total

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