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Inter-Method Performance Study of Tumor Volumetry Assessment on Computed Tomography Test-Retest Data.

Authors :
Buckler, Andrew J
Buckler, Andrew J
Danagoulian, Jovanna
Johnson, Kjell
Peskin, Adele
Gavrielides, Marios A
Petrick, Nicholas
Obuchowski, Nancy A
Beaumont, Hubert
Hadjiiski, Lubomir
Jarecha, Rudresh
Kuhnigk, Jan-Martin
Mantri, Ninad
McNitt-Gray, Michael
Moltz, Jan H
Nyiri, Gergely
Peterson, Sam
Tervé, Pierre
Tietjen, Christian
von Lavante, Etienne
Ma, Xiaonan
St Pierre, Samantha
Athelogou, Maria
Buckler, Andrew J
Buckler, Andrew J
Danagoulian, Jovanna
Johnson, Kjell
Peskin, Adele
Gavrielides, Marios A
Petrick, Nicholas
Obuchowski, Nancy A
Beaumont, Hubert
Hadjiiski, Lubomir
Jarecha, Rudresh
Kuhnigk, Jan-Martin
Mantri, Ninad
McNitt-Gray, Michael
Moltz, Jan H
Nyiri, Gergely
Peterson, Sam
Tervé, Pierre
Tietjen, Christian
von Lavante, Etienne
Ma, Xiaonan
St Pierre, Samantha
Athelogou, Maria
Source :
Academic radiology; vol 22, iss 11, 1393-1408; 1076-6332
Publication Year :
2015

Abstract

Rationale and objectivesTumor volume change has potential as a biomarker for diagnosis, therapy planning, and treatment response. Precision was evaluated and compared among semiautomated lung tumor volume measurement algorithms from clinical thoracic computed tomography data sets. The results inform approaches and testing requirements for establishing conformance with the Quantitative Imaging Biomarker Alliance (QIBA) Computed Tomography Volumetry Profile.Materials and methodsIndustry and academic groups participated in a challenge study. Intra-algorithm repeatability and inter-algorithm reproducibility were estimated. Relative magnitudes of various sources of variability were estimated using a linear mixed effects model. Segmentation boundaries were compared to provide a basis on which to optimize algorithm performance for developers.ResultsIntra-algorithm repeatability ranged from 13% (best performing) to 100% (least performing), with most algorithms demonstrating improved repeatability as the tumor size increased. Inter-algorithm reproducibility was determined in three partitions and was found to be 58% for the four best performing groups, 70% for the set of groups meeting repeatability requirements, and 84% when all groups but the least performer were included. The best performing partition performed markedly better on tumors with equivalent diameters greater than 40 mm. Larger tumors benefitted by human editing but smaller tumors did not. One-fifth to one-half of the total variability came from sources independent of the algorithms. Segmentation boundaries differed substantially, not ony in overall volume but also in detail.ConclusionsNine of the 12 participating algorithms pass precision requirements similar to what is indicated in the QIBA Profile, with the caveat that the present study was not designed to explicitly evaluate algorithm profile conformance. Change in tumor volume can be measured with confidence to within ±14% using any of these nine

Details

Database :
OAIster
Journal :
Academic radiology; vol 22, iss 11, 1393-1408; 1076-6332
Notes :
Academic radiology vol 22, iss 11, 1393-1408 1076-6332
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367435967
Document Type :
Electronic Resource