The FRAME model accurately predicted hospital length of stay in acute coronary syndrome patients, achieving a mean absolute error of 1.33 and a Pearson correlation coefficient of 0.96.
Observational (n=615)
No
Does the FRAME multimodal transformer model improve the prediction of hospital length of stay in patients with acute coronary syndrome compared to existing models?
A novel multimodal Transformer model (FRAME) combining CT images and EMR data significantly improves the prediction of hospital length of stay for patients with acute coronary syndrome.
valor p: p=<0.0001
The prediction of hospital length of stay (LOS) is of great significance for hospitals to rationally allocate medical resources and provide timely treatment for patients, especially for acute coronary syndromes (ACS), which requires prompt medical intervention. To this end, we propose a fine-grained Transformer with morphological enhancement for predicting hospital LOS in ACS. Considering the morphological features of blood vessels in computed tomography (CT) images, we design photometric and geometric transformations and combined self-supervised learning to extract enhanced morphological features. To fuse the CT image features with the physiological features contained in the electronic medical record, a multiscale attention is designed and capture the intra-modal and inter-modal fine-grained features with sparse strategy. We compare 16 state-of-the-art models, including classic machine learning models commonly used in ACS, the most advanced visual models, multimodal Transformers, and the latest LOS prediction models. The results show that our model achieved the best prediction results (mean absolute error is 1.33, Pearson correlation coefficient is 0.96). Further, we conduct the interpretability analysis, our model can well perceive the lesion regions, and the salient features have significant correlation with LOS (p = 0.0005). The ablation experiments also verified the effectiveness of each module. This work is expected to provide an effective tool for LOS prediction, thereby enabling the rational allocation of medical resources and offering timely intervention to patients in hospital.
You et al. (Sat,) conducted a observational in Acute coronary syndrome (n=615). FRAME (Fine-gRained TrAnsformer with Morphological Enhancement) model vs. 16 state-of-the-art machine learning and deep learning models was evaluated on Mean Absolute Error (MAE) for predicting hospital length of stay (p=<0.0001). The FRAME model accurately predicted hospital length of stay in acute coronary syndrome patients, achieving a mean absolute error of 1.33 and a Pearson correlation coefficient of 0.96.