Grudza M, Salinel B, Zeien S, Murphy M, Adkins J, Jensen CT, Bay C, Kodibagkar V, Koo P, Dragovich T, Choti MA, Kundranda M, Syeda-Mahmood T, Wang HZ, Chang J. Methods for improving colorectal cancer annotation efficiency for artificial intelligence-observer training. World J Radiol 2023; 15(12): 359-369 [PMID: 38179201 DOI: 10.4329/wjr.v15.i12.359]
Corresponding Author of This Article
John Chang, MD, PhD, Doctor, Department of Radiology, Banner MD Anderson Cancer Center, 2940 E. Banner Gateway Drive, Suite 315, Gilbert, AZ 85234, United States. changresearch1@gmail.com
Research Domain of This Article
Radiology, Nuclear Medicine & Medical Imaging
Article-Type of This Article
Observational Study
Open-Access Policy of This Article
This article is an open-access article which was selected by an in-house editor and fully peer-reviewed by external reviewers. It is distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/
World J Radiol. Dec 28, 2023; 15(12): 359-369 Published online Dec 28, 2023. doi: 10.4329/wjr.v15.i12.359
Table 1 Clinical and protocol details of training and test cases
Training cases (n = 58)
Test cases (n = 20)
AJCC stage
Stage 1
0
5
Stage 2
15
5
Stage 3
14
7
Stage 4
29
3
T stage
T1
0
2
T2
0
4
T3
21
13
T4
37
1
Location
Right
39
17
Transverse
3
2
Left
16
1
CT slice thickness (mm)
7
0
1
5
29
17
3-4
25
0
2 or less
4
2
Contrast
IV+PO
27
18
IV
22
1
PO
4
1
None
5
0
Table 2 Sensitivity and false positives/case for ensemble technique
Single voter
2 voter
3 voter
Sensitivity
0.8
0.6
0.3
False positives/case
21.95
7.55
3.7
Table 3 Dice coefficient distribution for ensemble technique
Percentage of cases
Estimated dice coefficient
0
0-0.25
0.25-0.5
> 0.5
Single voter
20
5
60
15
2 voter
40
35
20
5
3 voter
70
15
10
5
Table 4 Amount of time needed to annotate the tumor
Lesion size
Annotation time based on technique (Min:Sec ± min)
Manual (n = 3 each)
AI-single voter (n = 3 each)
AI-2-voter (n = 3 each)
Skip-1 (n = 3 each)
Skip-2 (n = 3 each)
Large
22:09 ± 0.18
21:00 ± 0.23
20:29 ± 0.22
8:58 ± 1.22
5:34 ± 1.19
Medium
15:06 ± 0.4
10:37 ± 0.25
9:13 ± 0.15
4:58 ± 2.57
1:14 ± 1.38
Small
5:54 ± 0.07
6:26 ± 0.03
5:44 ± 0.02
2:23 ± 0.14
1:24 ± 0.28
Citation: Grudza M, Salinel B, Zeien S, Murphy M, Adkins J, Jensen CT, Bay C, Kodibagkar V, Koo P, Dragovich T, Choti MA, Kundranda M, Syeda-Mahmood T, Wang HZ, Chang J. Methods for improving colorectal cancer annotation efficiency for artificial intelligence-observer training. World J Radiol 2023; 15(12): 359-369