Identifying knowledge gaps in heart failure research among women using unsupervised machine-learning methods.
Khalid AlhussainKazuhiko KidoNilanjana DwibediTraci LeMastersDanielle E RoseRanjita MisraUsha SambamoorthiPublished in: Future cardiology (2021)
Aim: To identify knowledge gaps in heart failure (HF) research among women, especially postmenopausal women. Materials & methods: We retrieved HF articles from PubMed. Natural language processing and text mining techniques were used to screen relevant articles and identify study objective(s) from abstracts. After text preprocessing, we performed topic modeling with non-negative matrix factorization to cluster articles based on the primary topic. Clusters were independently validated and labeled by three investigators familiar with HF research. Results: Our model yielded 15 topic clusters from articles on HF among women. Atrial fibrillation was found to be the most understudied topic. From articles specific to postmenopausal women, five clusters were identified. The smallest cluster was about stress-induced cardiomyopathy. Conclusion: Topic modeling can help identify understudied areas in medical research.
Keyphrases
- postmenopausal women
- heart failure
- acute heart failure
- bone mineral density
- machine learning
- stress induced
- polycystic ovary syndrome
- atrial fibrillation
- healthcare
- pregnancy outcomes
- left ventricular
- breast cancer risk
- autism spectrum disorder
- cardiac resynchronization therapy
- big data
- catheter ablation
- deep learning
- acute coronary syndrome
- artificial intelligence
- computed tomography
- left atrial appendage
- percutaneous coronary intervention
- mitral valve