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Using explainable AI to characterize features in the Mirai mammographic breast cancer risk prediction model
ID
Wang, Yao Kuan
(
Author
),
ID
Klaneček, Žan
(
Author
),
ID
Wagner, Tobias
(
Author
),
ID
Cockmartin, Lesley
(
Author
),
ID
Marshall, Nicholas
(
Author
),
ID
Studen, Andrej
(
Author
),
ID
Jeraj, Robert
(
Author
),
ID
Bosmans, Hilde
(
Author
)
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https://pubs.rsna.org/doi/10.1148/ryai.240417
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Abstract
Purpose To evaluate whether features extracted by Mirai can be aligned with mammographic observations and contribute meaningfully to the prediction of breast cancer risk. Materials and Methods This retrospective study examined the correlation of 512 Mirai features with mammographic observations in terms of receptive field and anatomic location. A total of 29 374 screening examinations with mammograms (10 415 female patients; mean age at examination, 60 years ± 11 [SD]) from the EMory BrEast imaging Dataset (EMBED) (2013–2020) were used to evaluate feature importance using a feature-centric explainable artificial intelligence pipeline. Risk prediction was evaluated using only calcification features (CalcMirai) or mass features (MassMirai) against Mirai. Performance was assessed in screening and screen-negative (time to cancer, >6 months) populations using the area under the receiver operating characteristic curve (AUC). Results Eighteen calcification features and 18 mass features were selected for CalcMirai and MassMirai, respectively. Both CalcMirai and MassMirai had lower performance than Mirai in lesion detection (screening population: Mirai 1-year AUC, 0.81 [95% CI: 0.78, 0.84]; CalcMirai 1-year AUC, 0.76 [95% CI: 0.73, 0.80]; MassMirai 1-year AUC, 0.74 [95% CI: 0.71, 0.78] [P < .001]). In risk prediction, there was no evidence of a difference in performance between CalcMirai and Mirai (screen-negative population: Mirai 5-year AUC, 0.66 [95% CI: 0.63, 0.69]; CalcMirai 5-year AUC, 0.66 [95% CI: 0.64, 0.69] [P = .71]). However, MassMirai achieved lower performance than Mirai (5-year AUC, 0.57 [95% CI: 0.54, 0.60]; P < .001). Radiologist review of calcification features confirmed Mirai’s use of benign calcification in risk prediction. Conclusion The explainable AI pipeline demonstrated that Mirai implicitly learned to identify mammographic lesion features, particularly calcifications, for lesion detection and risk prediction.
Language:
English
Keywords:
medical imaging
,
mammography
,
breast cancer
,
risk prediction
,
artificial intelligence
Work type:
Article
Typology:
1.01 - Original Scientific Article
Organization:
FMF - Faculty of Mathematics and Physics
Publication status:
Published
Publication version:
Version of Record
Year:
2025
Number of pages:
10 str.
Numbering:
Vol. 7, no. 6
PID:
20.500.12556/RUL-176185
UDC:
616-006
ISSN on article:
2638-6100
DOI:
10.1148/ryai.240417
COBISS.SI-ID:
248268803
Publication date in RUL:
24.11.2025
Views:
106
Downloads:
30
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Record is a part of a journal
Title:
Radiology : Artificial intelligence.
Publisher:
Radiological Society of North America
ISSN:
2638-6100
COBISS.SI-ID:
175499779
Licences
License:
CC BY 4.0, Creative Commons Attribution 4.0 International
Link:
http://creativecommons.org/licenses/by/4.0/
Description:
This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.
Secondary language
Language:
Slovenian
Keywords:
medicinsko slikanje
,
mamografija
,
rak dojk
,
ogroženost
,
umetna inteligenca
Projects
Funder:
ARIS - Slovenian Research and Innovation Agency
Project number:
P1-0389-2022
Name:
Medicinska fizika
Funder:
FWO
Funding programme:
Research Foundation - Flanders
Project number:
G0A7121N
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