Multimodal deep learning model on interim [18F]FDG PET/CT for predicting primary treatment failure in diffuse large B-cell lymphoma
Objectives The prediction of primary treatment failure (PTF) is necessary for patients with diffuse large B-cell lymphoma (DLBCL) since it serves as a prominent means for improving front-line outcomes. Using interim 18 F-fluoro-2-deoxyglucose ([ 18 F]FDG) positron emission tomography/computed tomogr...
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Veröffentlicht in: | European radiology 2023-01, Vol.33 (1), p.77-88 |
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Sprache: | eng |
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Zusammenfassung: | Objectives
The prediction of primary treatment failure (PTF) is necessary for patients with diffuse large B-cell lymphoma (DLBCL) since it serves as a prominent means for improving front-line outcomes. Using interim
18
F-fluoro-2-deoxyglucose ([
18
F]FDG) positron emission tomography/computed tomography (PET/CT) imaging data, we aimed to construct multimodal deep learning (MDL) models to predict possible PTF in low-risk DLBCL.
Methods
Initially, 205 DLBCL patients undergoing interim [
18
F]FDG PET/CT scans and the front-line standard of care were included in the primary dataset for model development. Then, 44 other patients were included in the external dataset for generalization evaluation. Based on the powerful backbone of the Conv-LSTM network, we incorporated five different multimodal fusion strategies (pixel intermixing, separate channel, separate branch, quantitative weighting, and hybrid learning) to make full use of PET/CT features and built five corresponding MDL models. Moreover, we found the best model, that is, the hybrid learning model, and optimized it by integrating the contrastive training objective to further improve its prediction performance.
Results
The final model with contrastive objective optimization, named the contrastive hybrid learning model, performed best, with an accuracy of 91.22% and an area under the receiver operating characteristic curve (AUC) of 0.926, in the primary dataset. In the external dataset, its accuracy and AUC remained at 88.64% and 0.925, respectively, indicating its good generalization ability.
Conclusions
The proposed model achieved good performance, validated the predictive value of interim PET/CT, and holds promise for directing individualized clinical treatment.
Key Points
• The proposed multimodal models achieved accurate prediction of primary treatment failure in DLBCL patients.
• Using an appropriate feature-level fusion strategy can make the same class close to each other regardless of the modal heterogeneity of the data source domain and positively impact the prediction performance.
• Deep learning validated the predictive value of interim PET/CT in a way that exceeded human capabilities. |
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ISSN: | 1432-1084 0938-7994 1432-1084 |
DOI: | 10.1007/s00330-022-09031-8 |