P6422Physician vs machine: an innovative ST-elevation myocardial infarction pathway through artificial intelligence

2019 ◽  
Vol 40 (Supplement_1) ◽  
Author(s):  
S Mehta ◽  
R Botelho ◽  
F Fernandez ◽  
C Villagran ◽  
A Frauenfelder ◽  
...  

Abstract Background The diagnosis of ST-Elevation Myocardial Infarction (STEMI) has traditionally relied on a cardiologist's interpretation of an Electrocardiogram (EKG). This cumbersome process is costly, inefficient and out of date. Artificial Intelligence (AI) -guided algorithms can provide point-of-care, accurate STEMI diagnosis that will facilitate STEMI management. Purpose To demonstrate the feasibility of an automated AI-guided EKG analysis for STEMI diagnosis. Methods An observational, retrospective, case-control study. Sample: 8,511 EKG cardiologist-annotated records, including 4,255 STEMI cases. Records excluded patient and medical information. The sample was derived from the private International Telemedical Systems (ITMS) database. LUMENGT-AI Algorithm was employed. Preprocessing: detection of QRS complexes by wavelet system, segmentation of each EKG into individual heartbeats (90,592 total beats) with fixed window of 0.4s to the left and 0.9s to the right of main QRS; Classification: A 1-D convolutional neural network was implemented, “STEMI” and “Not-STEMI” classes were considered for each heartbeat, individual probabilities were aggregated to generate the final label for each record. Training & Testing: 90% and 10% of the sample were used, respectively. Experiments: Intel PC i7 8750H processor at 2.21GHz, 16GB RAM, Windows 10 OS with NVidia GTX 1070 GPU, 8GB RAM. Results The model achieved an accuracy of 96.5%, with a sensitivity of 96.3%, and a specificity of 96.8%. Conclusion(s) 1) AI-guided interpretation of the EKG can reliably diagnose STEMI; 2) AI algorithms can be incorporated into ambulance systems for pre-hospital diagnosis, single page activation, emergency department bypass, facilitating more efficient STEMI pathways.

Nutrition ◽  
2019 ◽  
Vol 65 ◽  
pp. 185-190 ◽  
Author(s):  
Paola Scarano ◽  
Marco Magnoni ◽  
Vittoria Vergani ◽  
Martina Berteotti ◽  
Nicole Cristell ◽  
...  

2019 ◽  
Vol 40 (Supplement_1) ◽  
Author(s):  
S Mehta ◽  
F Fernandez ◽  
C Villagran ◽  
A Frauenfelder ◽  
C Matheus ◽  
...  

Abstract Background For the past years, the medical field has been taking advantage of the endless possibilities that Artificial Intelligence (AI) provides. Using computer-aided devices that can perform and interpret electrocardiograms (EKG) accurately pushes current healthcare boundaries. We present the LUMENGT-AI, this model can handle large datasets, multiclass diagnoses, complex EKG morphology, and still detect ST Elevation MI (STEMI) accurately. Purpose To develop an innovative AI-based system for automated STEMI specific EKG analysis. Methods An observational, retrospective, case-control study. Sample: 8,511 EKG records, previously diagnosed as “normal”, “abnormal” (over 200 conditions) or “STEMI” (4,255 cases). Records excluded patient and medical information. The sample was derived from the private International Telemedical Systems (ITMS) database. LUMENGT-AI Algorithm was employed. Preprocessing: detection of QRS complexes by wavelet system, segmentation of each EKG into individual heartbeats (90,592 total beats) with fixed window of 0.4s to the left and 0.9s to the right of main QRS; Classification: A 1-D convolutional neural network was implemented, “STEMI” and “Not-STEMI” classes were considered for each heartbeat, individual probabilities were aggregated to generate the final label for each record. Training & Testing: 90% and 10% of the sample were used, respectively. Experiments: Intel PC i7 8750H processor at 2.21GHz, 16GB RAM, Windows 10 OS with NVidia GTX 1070 GPU, 8GB RAM. Results Ground Truth Score – Accuracy (94.1%), Sensitivity (87.8%), Specificity (98.1%) – see the comparison to published data in Table. Conclusions A statistical analysis allowed us to compare STEMI recognition efficiency between physicians and our model. The LUMENGT algorithm results secured its place as a reliable tool to diagnose STEMI faster and more accurately than physicians.


2012 ◽  
Vol 11 (1) ◽  
pp. 43 ◽  
Author(s):  
Young Joo Kim ◽  
Dong Wook Jeong ◽  
Jeong Gyu Lee ◽  
Han Cheol Lee ◽  
Sang Yeoup Lee ◽  
...  

2020 ◽  
Vol 19 (1) ◽  
Author(s):  
Himani Thakkar ◽  
Vinnyfred Vincent ◽  
Ambuj Roy ◽  
Sandeep Singh ◽  
Lakshmy Ramakrishnan ◽  
...  

2019 ◽  
Vol 40 (Supplement_1) ◽  
Author(s):  
S Mehta ◽  
R Botelho ◽  
F Fernandez ◽  
C Villagran ◽  
A Frauenfelder ◽  
...  

Abstract Background We have previously reported the use of Artificial Intelligence (AI) guided EKG analysis for detection of ST-Elevation Myocardial Infarction (STEMI). To demonstrate the diagnostic value of our algorithm, we compared AI predictions with reports that were confirmed as STEMI. Purpose To demonstrate the absolute proficiency of AI for detecting STEMI in a standard12-lead EKG. Methods An observational, retrospective, case-control study. Sample: 5,087 EKG records, including 2,543 confirmed STEMI cases obtained via feedback from health centers following appropriate patient management (thrombolysis, primary Percutaneous Coronary Intervention (PCI), pharmacoinvasive therapy or coronary artery bypass surgery). Records excluded patient and medical information. The sample was derived from the International Telemedical Systems (ITMS) database. LUMENGT-AI Algorithm was employed. Preprocessing: detection of QRS complexes by wavelet system, segmentation of each EKG into individual heartbeats (53,667 total beats) with fixed window of 0.4s to the left and 0.9s to the right of main QRS; Classification: A 1-D convolutional neural network was implemented, “STEMI” and “Not-STEMI” classes were considered for each heartbeat, individual probabilities were aggregated to generate the final label for each record. Training & Testing: 90% and 10% of the sample were used, respectively. Experiments: Intel PC i7 8750H processor at 2.21GHz, 16GB RAM, Windows 10 OS with NVIDIA GTX 1070 GPU, 8GB RAM. Results The model yielded an accuracy of 97.2%, a sensitivity of 95.8%, and a specificity of 98.5%. Conclusion(s) Our AI-based algorithm can reliably diagnose STEMI and will preclude the role of a cardiologist for screening and diagnosis, especially in the pre-hospital setting.


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