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Early prediction of need for invasive mechanical ventilation in the neonatal intensive care unit using artificial intelligence and electronic health records: a clinical study.
Kim, Younga; Kim, Hyeongsub; Choi, Jaewoo; Cho, Kyungjae; Yoo, Dongjoon; Lee, Yeha; Park, Su Jeong; Jeong, Mun Hui; Jeong, Seong Hee; Park, Kyung Hee; Byun, Shin-Yun; Kim, Taehwa; Ahn, Sung-Ho; Cho, Woo Hyun; Lee, Narae.
Afiliação
  • Kim Y; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea.
  • Kim H; VUNO Inc, Seoul, Korea.
  • Choi J; VUNO Inc, Seoul, Korea.
  • Cho K; VUNO Inc, Seoul, Korea.
  • Yoo D; VUNO Inc, Seoul, Korea.
  • Lee Y; VUNO Inc, Seoul, Korea.
  • Park SJ; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea.
  • Jeong MH; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea.
  • Jeong SH; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea.
  • Park KH; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea.
  • Byun SY; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea.
  • Kim T; Division of Pulmonology, Allergy and Critical Care Medicine, Department of Internal Medicine, Pusan National University School of Medicine, and Research Institute for Convergence of Biomedical Science and Technology, Pusan National University Yangsan Hospital, Yangsan, Korea.
  • Ahn SH; Department of Neurology, Division of Biostatistics, Research Institute for Convergence of Biomedical Science and Technology, Pusan National University Yangsan Hospital, Pusan National University School of Medicine, Busan, Korea.
  • Cho WH; Division of Pulmonology, Allergy and Critical Care Medicine, Department of Internal Medicine, Pusan National University School of Medicine, and Research Institute for Convergence of Biomedical Science and Technology, Pusan National University Yangsan Hospital, Yangsan, Korea.
  • Lee N; Department of Pediatrics, Pusan National University School of Medicine, 20, Geumo-Ro, Mulgeum-Eup, Yangsan, 50612, Republic of Korea. nahrae111@gmail.com.
BMC Pediatr ; 23(1): 525, 2023 10 23.
Article em En | MEDLINE | ID: mdl-37872515
ABSTRACT

BACKGROUND:

Respiratory support is crucial for newborns with underdeveloped lung. The clinical outcomes of patients depend on the clinician's ability to recognize the status underlying the presented symptoms and signs. With the increasing number of high-risk infants, artificial intelligence (AI) should be considered as a tool for personalized neonatal care. Continuous monitoring of vital signs is essential in cardiorespiratory care. In this study, we developed deep learning (DL) prediction models for rapid and accurate detection of mechanical ventilation requirements in neonates using electronic health records (EHR).

METHODS:

We utilized data from the neonatal intensive care unit in a single center, collected between March 3, 2012, and March 4, 2022, including 1,394 patient records used for model development, consisting of 505 and 889 patients with and without invasive mechanical ventilation (IMV) support, respectively. The proposed model architecture includes feature embedding using feature-wise fully connected (FC) layers, followed by three bidirectional long short-term memory (LSTM) layers.

RESULTS:

A mean gestational age (GA) was 36.61 ± 3.25 weeks, and the mean birth weight was 2,734.01 ± 784.98 g. The IMV group had lower GA, birth weight, and longer hospitalization duration than the non-IMV group (P < 0.05). Our proposed model, tested on a dataset from March 4, 2019, to March 4, 2022. The mean AUROC of our proposed model for IMV support prediction performance demonstrated 0.861 (95%CI, 0.853-0.869). It is superior to conventional approaches, such as newborn early warning score systems (NEWS), Random Forest, and eXtreme gradient boosting (XGBoost) with 0.611 (95%CI, 0.600-0.622), 0.837 (95%CI, 0.828-0.845), and 0.0.831 (95%CI, 0.821-0.845), respectively. The highest AUPRC value is shown in the proposed model at 0.327 (95%CI, 0.308-0.347). The proposed model performed more accurate predictions as gestational age decreased. Additionally, the model exhibited the lowest alarm rate while maintaining the same sensitivity level.

CONCLUSION:

Deep learning approaches can help accurately standardize the prediction of invasive mechanical ventilation for neonatal patients and facilitate advanced neonatal care. The results of predictive, recall, and alarm performances of the proposed model outperformed the other models.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Respiração Artificial / Unidades de Terapia Intensiva Neonatal Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Respiração Artificial / Unidades de Terapia Intensiva Neonatal Idioma: En Ano de publicação: 2023 Tipo de documento: Article