Multimodal Deep Learning-Based Prognostication in Glioma Patients: A Systematic Review.
Kaitlyn AllemanErik KnechtJonathan HuangLu ZhangSandi LamMichael DeCuyperePublished in: Cancers (2023)
Malignant brain tumors pose a substantial burden on morbidity and mortality. As clinical data collection improves, along with the capacity to analyze it, novel predictive clinical tools may improve prognosis prediction. Deep learning (DL) holds promise for integrating clinical data of various modalities. A systematic review of the DL-based prognostication of gliomas was performed using the Embase (Elsevier), PubMed MEDLINE (National library of Medicine), and Scopus (Elsevier) databases, in accordance with PRISMA guidelines. All included studies focused on the prognostication of gliomas, and predicted overall survival (13 studies, 81%), overall survival as well as genotype (2 studies, 12.5%), and response to immunotherapy (1 study, 6.2%). Multimodal analyses were varied, with 6 studies (37.5%) combining MRI with clinical data; 6 studies (37.5%) integrating MRI with histologic, clinical, and biomarker data; 3 studies (18.8%) combining MRI with genomic data; and 1 study (6.2%) combining histologic imaging with clinical data. Studies that compared multimodal models to unimodal-only models demonstrated improved predictive performance. The risk of bias was mixed, most commonly due to inconsistent methodological reporting. Overall, the use of multimodal data in DL assessments of gliomas leads to a more accurate overall survival prediction. However, due to data limitations and a lack of transparency in model and code reporting, the full extent of multimodal DL as a resource for brain tumor patients has not yet been realized.
Keyphrases
- big data
- electronic health record
- deep learning
- end stage renal disease
- case control
- magnetic resonance imaging
- high grade
- ejection fraction
- pain management
- randomized controlled trial
- artificial intelligence
- chronic kidney disease
- emergency department
- machine learning
- gene expression
- systematic review
- prognostic factors
- high resolution
- magnetic resonance
- dna methylation
- genome wide