Multi-modal deep-learning troponin prediction from electrocardiograms and demographic data.
Electrocardiograms (ECGs) and troponin (Tn) testing are essential tools for the diagnosis and management of cardiac conditions. Prompt diagnosis using these tools can significantly improve patient outcomes.
The objective of this study was to design and create a deep-learning model capable of predicting high-sensitivity troponin (hs-Tn) elevation in patients undergoing chest-pain triage. We developed a novel, multi-modal, externally validated deep-learning model that incorporates ECG data, age, and sex to predict high-sensitivity troponin-T elevation. The dataset used for this study was multi-centre and externally validated, drawing from data collected in two emergency rooms. The study population included all patients presenting to the ER with either chest pain or dyspnoea during the study period, where an ECG was recorded and a Tn test was performed. The model was trained on a dataset comprising 35 821 ECGs, with a positive fraction of 35.7%. It achieved an internal area under the receiver operating characteristic (AUROC) of 0.8958 ± 0.0040 (95% CI) and an AUROC of 0.8765 ± 0.0110 in external validation. The model's Score-CAM saliency maps demonstrated high activation from the ST-segment, indicating that the model draws information from relevant ECG segments.
This study presents new opportunities for enhancing triage processes, enabling more rapid and accurate alerts to physicians regarding acute myocardial infarctions. The primary benefit of predicting Tn elevation lies in the objectivity of the label compared with compounded clinical outcomes and diagnoses.
The objective of this study was to design and create a deep-learning model capable of predicting high-sensitivity troponin (hs-Tn) elevation in patients undergoing chest-pain triage. We developed a novel, multi-modal, externally validated deep-learning model that incorporates ECG data, age, and sex to predict high-sensitivity troponin-T elevation. The dataset used for this study was multi-centre and externally validated, drawing from data collected in two emergency rooms. The study population included all patients presenting to the ER with either chest pain or dyspnoea during the study period, where an ECG was recorded and a Tn test was performed. The model was trained on a dataset comprising 35 821 ECGs, with a positive fraction of 35.7%. It achieved an internal area under the receiver operating characteristic (AUROC) of 0.8958 ± 0.0040 (95% CI) and an AUROC of 0.8765 ± 0.0110 in external validation. The model's Score-CAM saliency maps demonstrated high activation from the ST-segment, indicating that the model draws information from relevant ECG segments.
This study presents new opportunities for enhancing triage processes, enabling more rapid and accurate alerts to physicians regarding acute myocardial infarctions. The primary benefit of predicting Tn elevation lies in the objectivity of the label compared with compounded clinical outcomes and diagnoses.
Authors
Hilgendorf Hilgendorf, Pétursson Pétursson, Andersson Andersson, Rawshani Rawshani, Bhatt Bhatt, Gupta Gupta, Lundgren Lundgren, Skoglund Skoglund, Råmunddal Råmunddal, Rawshani Rawshani
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