Development and Temporal Validation of a Machine Learning Model to Predict Clinical Deterioration

被引:3
作者
Foote, Henry P. [1 ]
Shaikh, Zohaib [3 ,6 ]
Witt, Daniel [3 ,7 ]
Shen, Tong [4 ]
Ratliff, William [3 ]
Shi, Harvey [3 ]
Gao, Michael [3 ]
Nichols, Marshall [3 ]
Sendak, Mark [3 ]
Balu, Suresh [3 ]
Osborne, Karen [5 ]
Kumar, Karan R. [2 ]
Jackson, Kimberly [2 ]
McCrary, Andrew W. [1 ]
Li, Jennifer S. [1 ]
机构
[1] Duke Univ, Div Pediat Cardiol, Durham, NC USA
[2] Duke Univ, Pediat Crit Care Med, Durham, NC USA
[3] Duke Univ, Duke Inst Hlth Innovat, Durham, NC USA
[4] Duke Univ, Dept Biomed Engn, Durham, NC USA
[5] Duke Univ, Duke Univ Hlth Syst, Durham, NC USA
[6] Weill Cornell Med Ctr, Dept Med, New York, NY USA
[7] Mayo Clin, Alix Sch Med, Rochester, MN USA
关键词
EARLY WARNING SYSTEM; INTENSIVE-CARE-UNIT; SCORE; MORTALITY; CHILDREN; IMPACT; NEED;
D O I
10.1542/hpeds.2023-007308
中图分类号
R72 [儿科学];
学科分类号
100202 ;
摘要
OBJECTIVES Early warning scores detecting clinical deterioration in pediatric inpatients have wide-ranging performance and use a limited number of clinical features. This study developed a machine learning model leveraging multiple static and dynamic clinical features from the electronic health record to predict the composite outcome of unplanned transfer to the ICU within 24 hours and inpatient mortality within 48 hours in hospitalized children.METHODS Using a retrospective development cohort of 17 630 encounters across 10 388 patients, 2 machine learning models (light gradient boosting machine [LGBM] and random forest) were trained on 542 features and compared with our institutional Pediatric Early Warning Score (I-PEWS).RESULTS The LGBM model significantly outperformed I-PEWS based on receiver operating characteristic curve (AUROC) for the composite outcome of ICU transfer or mortality for both internal validation and temporal validation cohorts (AUROC 0.785 95% confidence interval [0.780-0.791] vs 0.708 [0.701-0.715] for temporal validation) as well as lead-time before deterioration events (median 11 hours vs 3 hours; P = .004). However, LGBM performance as evaluated by precision recall curve was lesser in the temporal validation cohort with associated decreased positive predictive value (6% vs 29%) and increased number needed to evaluate (17 vs 3) compared with I-PEWS.CONCLUSIONS Our electronic health record based machine learning model demonstrated improved AUROC and lead-time in predicting clinical deterioration in pediatric inpatients 24 to 48 hours in advance compared with I-PEWS. Further work is needed to optimize model positive predictive value to allow for integration into clinical practice.
引用
收藏
页码:11 / 20
页数:10
相关论文
共 50 条
[41]   Development and validation of machine learning models to predict the need for haemostatic therapy in acute upper gastrointestinal bleeding [J].
Nazarian, Scarlet ;
Lo, Frank Po Wen ;
Qiu, Jianing ;
Patel, Nisha ;
Lo, Benny ;
Ayaru, Lakshmana .
THERAPEUTIC ADVANCES IN GASTROINTESTINAL ENDOSCOPY, 2024, 17
[42]   Early Prediction of All-Cause Clinical Deterioration in General Wards Patients: Development and Validation of a Biomarker-Based Machine Learning Model Derived From Rapid Response Team Activations [J].
Saab, Antoine ;
Khalil, Cynthia Abi ;
Jammal, Mouin ;
Saikali, Melody ;
Lamy, Jean-Baptiste .
JOURNAL OF PATIENT SAFETY, 2022, 18 (06) :578-586
[43]   Temporal Generalizability of Machine Learning Models for Predicting Postoperative Delirium Using Electronic Health Record Data: Model Development and Validation Study [J].
Matsumoto, Koutarou ;
Nohara, Yasunobu ;
Sakaguchi, Mikako ;
Takayama, Yohei ;
Fukushige, Syota ;
Soejima, Hidehisa ;
Nakashima, Naoki ;
Kamouchi, Masahiro .
JMIR PERIOPERATIVE MEDICINE, 2023, 6
[44]   Predicting acute clinical deterioration with interpretable machine learning to support emergency care decision making [J].
Logothetis, Stelios Boulitsakis ;
Green, Darren ;
Holland, Mark ;
Al Moubayed, Noura .
SCIENTIFIC REPORTS, 2023, 13 (01)
[45]   Development and validation of machine learning prediction model for post-rehabilitation functional outcome after intracerebral hemorrhage [J].
Sonobe, Shinya ;
Ishikawa, Tetsuo ;
Niizuma, Kuniyasu ;
Kawakami, Eiryo ;
Ueda, Takuya ;
Takaya, Eichi ;
Miyauchi, Carlos Makoto ;
Iwazaki, Junya ;
Kochi, Ryuzaburo ;
Endo, Toshiki ;
Shastry, Arun ;
Jagannatha, Vijayananda ;
Seth, Ajay ;
Nakagawa, Atsuhiro ;
Yoshida, Masahiro ;
Tominaga, Teiji .
INTERDISCIPLINARY NEUROSURGERY-ADVANCED TECHNIQUES AND CASE MANAGEMENT, 2022, 29
[46]   Development and validation of machine learning-based prediction model for outcome of cardiac arrest in intensive care units [J].
Ni, Peifeng ;
Zhang, Sheng ;
Zhang, Gensheng ;
Zhang, Weidong ;
Zhang, Hongwei ;
Zhu, Ying ;
Hu, Wei ;
Diao, Mengyuan .
SCIENTIFIC REPORTS, 2025, 15 (01)
[47]   Development and validation of a score for clinical deterioration in patients with cerebral venous thrombosis [J].
Feng, Yinghe ;
Mo, Shaohua ;
Li, Xiong ;
Jiang, Pengjun ;
Wu, Jun ;
Li, Jiangan ;
Liu, Peng ;
Wang, Shuo ;
Liu, Qingyuan ;
Tong, Xianzeng .
NEUROSURGICAL REVIEW, 2025, 48 (01)
[48]   Derivation and Validation of Machine Learning Approaches to Predict Acute Kidney Injury after Cardiac Surgery [J].
Lee, Hyung-Chul ;
Yoon, Hyun-Kyu ;
Nam, Karam ;
Cho, Youn Joung ;
Kim, Tae Kyong ;
Kim, Won Ho ;
Bahk, Jae-Hyon .
JOURNAL OF CLINICAL MEDICINE, 2018, 7 (10)
[49]   Development and validation of a machine learning-based model for post-sepsis frailty [J].
Yeo, Hye Ju ;
Noh, Dasom ;
Kim, Tae Hwa ;
Jang, Jin Ho ;
Lee, Young Seok ;
Park, Sunghoon ;
Moon, Jae Young ;
Jeon, Kyeongman ;
Oh, Dong Kyu ;
Lee, Su Yeon ;
Park, Mi Hyeon ;
Lim, Chae-Man ;
Cho, Woo Hyun ;
Kwon, Sunyoung .
ERJ OPEN RESEARCH, 2024, 10 (05)
[50]   Development and validation of a simple risk model to predict major cancers for patients with nonalcoholic fatty liver disease [J].
Wei, Zihan ;
Ren, Zhigang ;
Hu, Shuang ;
Gao, Yan ;
Sun, Ranran ;
Lv, Shuai ;
Yang, Guojie ;
Yu, Zujiang ;
Kan, Quancheng .
CANCER MEDICINE, 2020, 9 (03) :1254-1262