Electrocardiographic deep learning for predicting post- procedural mortality: a model development and validation study

被引:11
|
作者
Ouyang, David [1 ,2 ]
Theurer, John [1 ]
Stein, Nathan R. [1 ]
Hughes, J. Weston [4 ]
Elias, Pierre [9 ,10 ]
He, Bryan [4 ]
Yuan, Neal [1 ]
Duffy, Grant [1 ]
Sandhu, Roopinder K. [1 ]
Ebinger, Joseph [1 ]
Botting, Patrick [1 ]
Jujjavarapu, Melvin [1 ]
Claggett, Brian [11 ]
Tooley, James E. [5 ]
Poterucha, Tim [9 ]
Chen, Jonathan H. [6 ]
Nurok, Michael [3 ]
Perez, Marco [5 ]
Perotte, Adler [9 ]
Zou, James Y. [4 ,7 ,8 ]
Cook, Nancy R. [12 ]
Chugh, Sumeet S. [1 ,2 ]
Cheng, Susan [1 ]
Albert, Christine M. [1 ]
机构
[1] Cedars Sinai Med Ctr, Smidt Heart Inst, Dept Cardiol, Los Angeles, CA 90035 USA
[2] Cedars Sinai Med Cente, Div Artificial Intelligence Med, Dept Med, Los Angeles, CA 90035 USA
[3] Cedars Sinai Med Ctr, Dept Surg, Div Anesthesia, Los Angeles, CA 90035 USA
[4] Stanford Univ, Dept Comp Sci, Palo Alto, CA, India
[5] Stanford Univ, Div Cardiol, Palo Alto, CA USA
[6] Stanford Univ, Div Bioinformat Res, Palo Alto, CA USA
[7] Stanford Univ, Sch Med, Dept Med, Palo Alto, CA 94304 USA
[8] Stanford Univ, Dept Biomed Data Sci, Palo Alto, CA USA
[9] Columbia Univ, Dept Med, Milstein Div Cardiol, Irving Med Ctr, New York, NY USA
[10] Columbia Univ, Dept Biomed Informat, Irving Med Ctr, New York, NY USA
[11] Brigham & Womens Hosp, Div Cardiovasc Med, Boston, MA USA
[12] Brigham & Womens Hosp, Dept Med, Div Prevent Med, Boston, MA USA
来源
LANCET DIGITAL HEALTH | 2024年 / 6卷 / 01期
关键词
POSTOPERATIVE TROPONIN LEVELS; CARDIAC RISK; CALCULATOR; DERIVATION;
D O I
10.1016/S2589-7500(23)00220-0
中图分类号
R-058 [];
学科分类号
摘要
Background Preoperative risk assessments used in clinical practice are insufficient in their ability to identify risk for postoperative mortality. Deep-learning analysis of electrocardiography can identify hidden risk markers that can help to prognosticate postoperative mortality. We aimed to develop a prognostic model that accurately predicts postoperative mortality in patients undergoing medical procedures and who had received preoperative electrocardiographic diagnostic testing. Methods In a derivation cohort of preoperative patients with available electrocardiograms (ECGs) from Cedars-Sinai Medical Center (Los Angeles, CA, USA) between Jan 1, 2015 and Dec 31, 2019, a deep-learning algorithm was developed to leverage waveform signals to discriminate postoperative mortality. We randomly split patients (8:1:1) into subsets for training, internal validation, and final algorithm test analyses. Model performance was assessed using area under the receiver operating characteristic curve (AUC) values in the hold-out test dataset and in two external hospital cohorts and compared with the established Revised Cardiac Risk Index (RCRI) score. The primary outcome was post-procedural mortality across three health-care systems. Findings 45 969 patients had a complete ECG waveform image available for at least one 12-lead ECG performed within the 30 days before the procedure date (59 975 inpatient procedures and 112 794 ECGs): 36 839 patients in the training dataset, 4549 in the internal validation dataset, and 4581 in the internal test dataset. In the held-out internal test cohort, the algorithm discriminates mortality with an AUC value of 0 center dot 83 (95% CI 0 center dot 79-0 center dot 87), surpassing the discrimination of the RCRI score with an AUC of 0 center dot 67 (0 center dot 61-0 center dot 72). The algorithm similarly discriminated risk for mortality in two independent US health-care systems, with AUCs of 0 center dot 79 (0 center dot 75-0 center dot 83) and 0 center dot 75 (0 center dot 74-0 center dot 76), respectively. Patients determined to be high risk by the deep-learning model had an unadjusted odds ratio (OR) of 8 center dot 83 (5 center dot 57-13 center dot 20) for postoperative mortality compared with an unadjusted OR of 2 center dot 08 (0 center dot 77-3 center dot 50) for postoperative mortality for RCRI scores of more than 2. The deep-learning algorithm performed similarly for patients undergoing cardiac surgery (AUC 0 center dot 85 [0 center dot 77-0 center dot 92]), non-cardiac surgery (AUC 0 center dot 83 [0 center dot 79-0 center dot 88]), and catheterisation or endoscopy suite procedures (AUC 0 center dot 76 [0 center dot 72-0 center dot 81]). Interpretation A deep-learning algorithm interpreting preoperative ECGs can improve discrimination of postoperative mortality. The deep-learning algorithm worked equally well for risk stratification of cardiac surgeries, non-cardiac surgeries, and catheterisation laboratory procedures, and was validated in three independent health-care systems. This algorithm can provide additional information to clinicians making the decision to perform medical procedures and the risk of future
引用
收藏
页码:e70 / e78
页数:9
相关论文
共 50 条
  • [1] A Lightweight Deep Learning Model for Fast Electrocardiographic Beats Classification With a Wearable Cardiac Monitor: Development and Validation Study
    Jeon, Eunjoo
    Oh, Kyusam
    Kwon, Soonhwan
    Son, HyeongGwan
    Yun, Yongkeun
    Jung, Eun-Soo
    Kim, Min Soo
    JMIR MEDICAL INFORMATICS, 2020, 8 (03)
  • [2] Electrocardiographic inverse validation study: Model development and methodology
    Bradley, CP
    Nash, MP
    Cheng, LK
    Paterson, DJ
    Pullan, AJ
    FASEB JOURNAL, 2000, 14 (04): : A442 - A442
  • [3] Predicting Postoperative Mortality With Deep Neural Networks and Natural Language Processing: Model Development and Validation
    Chen, Pei-Fu
    Chen, Lichin
    Lin, Yow-Kuan
    Li, Guo-Hung
    Lai, Feipei
    Lu, Cheng-Wei
    Yang, Chi-Yu
    Chen, Kuan-Chih
    Lin, Tzu-Yu
    JMIR MEDICAL INFORMATICS, 2022, 10 (05)
  • [4] Development and validation of a deep learning model for predicting postoperative survival of patients with gastric cancer
    Wu, Mengjie
    Yang, Xiaofan
    Liu, Yuxi
    Han, Feng
    Li, Xi
    Wang, Jufeng
    Guo, Dandan
    Tang, Xiance
    Lin, Lu
    Liu, Changpeng
    BMC PUBLIC HEALTH, 2024, 24 (01)
  • [5] Development and validation of a deep learning model for predicting postoperative survival of patients with gastric cancer
    Mengjie Wu
    Xiaofan Yang
    Yuxi Liu
    Feng Han
    Xi Li
    Jufeng Wang
    Dandan Guo
    Xiance Tang
    Lu Lin
    Changpeng Liu
    BMC Public Health, 24
  • [6] Development and validation of an interpretable machine learning model for predicting post-stroke epilepsy
    Yu, Yue
    Chen, Zhibin
    Yang, Yong
    Zhang, Jiajun
    Wang, Yan
    EPILEPSY RESEARCH, 2024, 205
  • [7] Development and validation of a deep learning-based model for predicting burnup nuclide density
    Lei, Jichong
    Yang, Chao
    Ren, Changan
    Li, Wei
    Liu, Chengwei
    Sun, Aikou
    Li, Yukun
    Chen, Zhenping
    Yu, Tao
    INTERNATIONAL JOURNAL OF ENERGY RESEARCH, 2022, 46 (15) : 21257 - 21265
  • [8] Development and validation of a deep learning model for predicting gastric cancer recurrence based on CT imaging: a multicenter study
    Cao, Mengxuan
    Hu, Can
    Li, Feng
    He, Jingyang
    Li, Enze
    Zhang, Ruolan
    Shi, Wenyi
    Zhang, Yanqiang
    Zhang, Yu
    Yang, Qing
    Zhao, Qianyu
    Shi, Lei
    Xu, Zhiyuan
    Cheng, Xiangdong
    INTERNATIONAL JOURNAL OF SURGERY, 2024, 110 (12) : 7598 - 7606
  • [9] Development and Validation of an Explainable Deep Learning Model to Predict In-Hospital Mortality for Patients With Acute Myocardial Infarction: Algorithm Development and Validation Study
    Xie, Puguang
    Wang, Hao
    Xiao, Jun
    Xu, Fan
    Liu, Jingyang
    Chen, Zihang
    Zhao, Weijie
    Hou, Siyu
    Wu, Dongdong
    Ma, Yu
    Xiao, Jingjing
    JOURNAL OF MEDICAL INTERNET RESEARCH, 2024, 26
  • [10] Development and validation of a model for predicting mortality in patients with hip fracture
    Hjelholt, Thomas J.
    Johnsen, Soren P.
    Brynningsen, Peter K.
    Knudsen, Jakob S.
    Prieto-Alhambra, Daniel
    Pedersen, Alma B.
    AGE AND AGEING, 2022, 51 (01)