Unique ID issued by UMIN | UMIN000037053 |
---|---|
Receipt number | R000042207 |
Scientific Title | Development of Computer-Aid Diagnosis System for T1b Colorectal Cancer on Non-magnified Plain Endoscopic Images: A Multicenter Study |
Date of disclosure of the study information | 2019/07/01 |
Last modified on | 2022/12/16 06:17:54 |
Development of AI Diagnosis System for T1b Colorectal Cancer on Non-magnified Plain Endoscopic Images
AI Dx for T1b CRC
Development of Computer-Aid Diagnosis System for T1b Colorectal Cancer on Non-magnified Plain Endoscopic Images: A Multicenter Study
CAD for T1b CRC by Plain Images
Japan |
Early stage colorectal cancer (Tis/T1a/T1b) receiving colonoscoppy between 2016 Jan. and 2018 Dec.
Gastroenterology |
Malignancy
NO
To develop and evaluate Computer-aid Diagnosis System to differentiate Tis/T1a stage from T1b stage colorectal cancer.
Others
Comparison with human endoscopists
Confirmatory
Others
Not applicable
Specificity for T1b colorectal cancer
Sensitivity, PPV, NPV and overall accuracy for T1b colorectal cancer
Others,meta-analysis etc
20 | years-old | <= |
100 | years-old | >= |
Male and Female
1) Consecutive series of Tis/T1a/T1b stage colorectal cancer endoscopically observed between 2016 Jan and 2018 December.
2) Non-magnified plain still images (3-5 shots)
1) Pedunculated morphology
2) Huge lesion, >5cm in size
3) Chromoendoscopic images
4) Images enhanced by NBI, BLI etc.
1500
1st name | Kazutomo |
Middle name | |
Last name | Togashi |
Aizu Medical Center Fukushima Medical University
Dept. of Coloproctology
969-3492
21-2Maeda, Tanisawa, Kawahigashi-machi, Aizuwakamatsu, Fukushima
+81-242752100
togashik@fmu.ac.jp
1st name | Masato |
Middle name | |
Last name | Aizawa |
Aizu Medical Center Fukushima Medical University
Dept. of Coloproctology
969-3492
21-2Maeda, Tanisawa, Kawahigashi-machi, Aizuwakamatsu, Fukushima
+81-242752100
aizawa-m@fmu.ac.jp
Fukushima Medical University
Fukushima Medical University
Self funding
Fukushima Medical University
1 Hikarigaoka, Fukushima-city
+81-25471825
rs@@fmu.ac.jp
YES
30301
Fukushima Medical University
福島県立医科大学会津医療センター(福島県)、自治医科大学(栃木県)、群馬大学医学部(群馬県)、小樽掖済会病院(北海道)、佐賀大学医学部(佐賀県)、自治医科大学さいたま医療センター(埼玉県)、東京女子医科大学東医療センター(東京都)、岩手医科大学(岩手県)、東京女子医科大学消化器病センター(東京都)、京都府立医科大学(京都府)、会津大学コンピュータ理工学部(福島県)
2019 | Year | 07 | Month | 01 | Day |
https://upload.umin.ac.jp/cgi-open-bin/icdr_e/ctr_view.cgi?recptno=R000042207
Partially published
https://www.giejournal.org/article/S0016-5107(21)00682-9/fulltext
1513
At 90% cutoff for per-lesion score, the CADx system showed the highest specificity of 94.4% [95% confidence interval: 91.3-96.6], with 59.8% [48.3-70.4] sensitivity and 87.3% [83.7-90.4] accuracy. The area under the characteristic curve was 85.1% [79.9-90.4] for CADx, 88.2% [83.7-92.8] for expert 1, 85.9% [80.9-90.9] for expert 2, 77.0% [71.5-82.4] for trainee 1 (CADx vs. trainee 1: p=0.0076), and 66.2% [60.6-71.9] for trainee 2 (CADx vs. trainee 2: p<0.0001).
2021 | Year | 12 | Month | 19 | Day |
A total of 1513 lesions (Tis 1074, T1a 145, T1b 294) in 5108 images were collected from 1470 patients at ten academic hospitals.
The lesions were assigned to training and testing datasets (3:1). The ResNet-50 network was used as the backbone to extract features from images. Over-sampling and focal loss were used to compensate class imbalance of invasive stage. Diagnostic performance was assessed using the testing dataset including 403 CRCs (Tis 276, T1a 45, T1b 82) with 1392 images. The CADx system generated a score for T1b diagnosis for each lesion. Two experts and two trainees read the identical testing dataset.
None
Per-lesion specificity for T1b colorectal cancers
Area under the characteristic curve
Other diagnostic values
Completed
2019 | Year | 04 | Month | 01 | Day |
2019 | Year | 05 | Month | 24 | Day |
2019 | Year | 10 | Month | 01 | Day |
2020 | Year | 06 | Month | 30 | Day |
2020 | Year | 10 | Month | 31 | Day |
2020 | Year | 12 | Month | 31 | Day |
2022 | Year | 03 | Month | 31 | Day |
After deep learning, diagnostic performance of AI is measured in a new reading set. Also, human endoscopists read the same reading set, and the diagnostic performance is compared with AI.
2019 | Year | 06 | Month | 13 | Day |
2022 | Year | 12 | Month | 16 | Day |
Value
https://center6.umin.ac.jp/cgi-open-bin/ctr_e/ctr_view.cgi?recptno=R000042207
Research Plan | |
---|---|
Registered date | File name |
2021/09/27 | Protocol_200714.docx |
Research case data specifications | |
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Registered date | File name |
2021/12/19 | Individual case data specification.xlsx |
Research case data | |
---|---|
Registered date | File name |
2021/12/19 | individual case data.xlsx |
Value
https://center6.umin.ac.jp/ice/42207