Measuring Efficiency of Semi-automated Brain Tumor Segmentation by Simulating User Interaction.

brain MRI deep learning efficiency glioma segmentation tumor

Journal

Frontiers in computational neuroscience
ISSN: 1662-5188
Titre abrégé: Front Comput Neurosci
Pays: Switzerland
ID NLM: 101477956

Informations de publication

Date de publication:
2020
Historique:
received: 26 11 2019
accepted: 24 03 2020
entrez: 7 5 2020
pubmed: 7 5 2020
medline: 7 5 2020
Statut: epublish

Résumé

Traditionally, radiologists have crudely quantified tumor extent by measuring the longest and shortest dimension by dragging a cursor between opposite boundary points across a single image rather than full segmentation of the volumetric extent. For algorithmic-based volumetric segmentation, the degree of radiologist experiential involvement varies from confirming a fully automated segmentation, to making a single drag on an image to initiate semi-automated segmentation, to making multiple drags and clicks on multiple images during interactive segmentation. An experiment was designed to test an algorithm that allows various levels of interaction. Given the ground-truth of the BraTS training data, which delimits the brain tumors of 285 patients on multi-spectral MR, a computer simulation mimicked the process that a radiologist would follow to perform segmentation with real-time interaction. Clicks and drags were placed only where needed in response to the deviation between real-time segmentation results and assumed radiologist's goal, as provided by the ground-truth. Results of accuracy for various levels of interaction are presented along with estimated elapsed time, in order to measure efficiency. Average total elapsed time, including loading the study through confirming 3D contours, was 46 s.

Identifiants

pubmed: 32372938
doi: 10.3389/fncom.2020.00032
pmc: PMC7177174
doi:

Types de publication

Journal Article

Langues

eng

Pagination

32

Informations de copyright

Copyright © 2020 Gering, Kotrotsou, Young-Moxon, Miller, Avery, Kohli, Knapp, Hoffman, Chylla, Peitzman and Mackie.

Références

Eur J Cancer. 2009 Jan;45(2):228-47
pubmed: 19097774
Sci Rep. 2013 Dec 18;3:3529
pubmed: 24346241
Sci Data. 2017 Sep 05;4:170117
pubmed: 28872634
Clin Cancer Res. 2009 Dec 1;15(23):7412-20
pubmed: 19934295
Radiology. 2019 Jun;291(3):781-791
pubmed: 30990384
IEEE Trans Pattern Anal Mach Intell. 2019 Jul;41(7):1559-1572
pubmed: 29993532
J Clin Oncol. 2010 Apr 10;28(11):1963-72
pubmed: 20231676
Radiother Oncol. 2010 Dec;97(3):572-8
pubmed: 20708285
Nat Clin Pract Oncol. 2008 Nov;5(11):634-44
pubmed: 18711427
IEEE Trans Med Imaging. 2015 Oct;34(10):1993-2024
pubmed: 25494501
JAMA. 2013 Nov 6;310(17):1842-50
pubmed: 24193082

Auteurs

David Gering (D)

HealthMyne Inc., Madison, WI, United States.

Aikaterini Kotrotsou (A)

HealthMyne Inc., Madison, WI, United States.

Brett Young-Moxon (B)

HealthMyne Inc., Madison, WI, United States.

Neal Miller (N)

HealthMyne Inc., Madison, WI, United States.

Aaron Avery (A)

HealthMyne Inc., Madison, WI, United States.

Lisa Kohli (L)

HealthMyne Inc., Madison, WI, United States.

Haley Knapp (H)

HealthMyne Inc., Madison, WI, United States.

Jeffrey Hoffman (J)

HealthMyne Inc., Madison, WI, United States.

Roger Chylla (R)

HealthMyne Inc., Madison, WI, United States.

Linda Peitzman (L)

HealthMyne Inc., Madison, WI, United States.

Thomas R Mackie (TR)

HealthMyne Inc., Madison, WI, United States.

Classifications MeSH