dc.contributor.author
Föllmer, Bernhard
dc.contributor.author
Biavati, Federico
dc.contributor.author
Wald, Christian
dc.contributor.author
Stober, Sebastian
dc.contributor.author
Ma, Jackie
dc.contributor.author
Dewey, Marc
dc.contributor.author
Samek, Wojciech
dc.date.accessioned
2025-03-28T15:27:15Z
dc.date.available
2025-03-28T15:27:15Z
dc.identifier.uri
https://refubium.fu-berlin.de/handle/fub188/47076
dc.identifier.uri
http://dx.doi.org/10.17169/refubium-46793
dc.description.abstract
Purpose
The coronary artery calcification (CAC) score is an independent marker for the risk of cardiovascular events. Automatic methods for quantifying CAC could reduce workload and assist radiologists in clinical decision-making. However, large annotated datasets are needed for training to achieve very good model performance, which is an expensive process and requires expert knowledge. The number of training data required can be reduced in an active learning scenario, which requires only the most informative samples to be labeled. Multitask learning techniques can improve model performance by joint learning of multiple related tasks and extraction of shared informative features.
Methods
We propose an uncertainty-weighted multitask learning model for coronary calcium scoring in electrocardiogram-gated (ECG-gated), noncontrast-enhanced cardiac calcium scoring CT. The model was trained to solve the two tasks of coronary artery region segmentation (weak labels) and coronary artery calcification segmentation (strong labels) simultaneously in an active learning scenario to improve model performance and reduce the number of samples needed for training. We compared our model with a single-task U-Net and a sequential-task model as well as other state-of-the-art methods. The model was evaluated on 1275 individual patients in three different datasets (DISCHARGE, CADMAN, orCaScore), and the relationship between model performance and various influencing factors (image noise, metal artifacts, motion artifacts, image quality) was analyzed.
Results
Joint learning of multiclass coronary artery region segmentation and binary coronary calcium segmentation improved calcium scoring performance. Since shared information can be learned from both tasks for complementary purposes, the model reached optimal performance with only 12% of the training data and one-third of the labeling time in an active learning scenario. We identified image noise as one of the most important factors influencing model performance along with anatomical abnormalities and metal artifacts.
Conclusions
Our multitask learning approach with uncertainty-weighted loss improves calcium scoring performance by joint learning of shared features and reduces labeling costs when trained in an active learning scenario.
en
dc.rights.uri
https://creativecommons.org/licenses/by/4.0/
dc.subject
coronary artery calcium scoring
en
dc.subject
deep learning
en
dc.subject
neural networks
en
dc.subject
active multitask learning
en
dc.subject
uncertainty-weighted loss
en
dc.subject.ddc
600 Technik, Medizin, angewandte Wissenschaften::610 Medizin und Gesundheit::610 Medizin und Gesundheit
dc.title
Active multitask learning with uncertainty‐weighted loss for coronary calcium scoring
dc.type
Wissenschaftlicher Artikel
dcterms.bibliographicCitation.doi
10.1002/mp.15870
dcterms.bibliographicCitation.journaltitle
Medical Physics
dcterms.bibliographicCitation.number
11
dcterms.bibliographicCitation.originalpublishername
Wiley
dcterms.bibliographicCitation.pagestart
7262
dcterms.bibliographicCitation.pageend
7277
dcterms.bibliographicCitation.volume
49
refubium.affiliation
Charité - Universitätsmedizin Berlin
refubium.funding
DEAL Wiley
refubium.resourceType.isindependentpub
no
dcterms.accessRights.openaire
open access
dcterms.bibliographicCitation.pmid
35861655
dcterms.isPartOf.issn
0094-2405
dcterms.isPartOf.eissn
2473-4209