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Development of a Machine Learning-Based Model for Predicting the Incidence of Peripheral Intravenous Catheter-Associated Phlebitis.
Yasuda, Hideto; Rickard, Claire M; Mimoz, Olivier; Marsh, Nicole; Schults, Jessica A; Drugeon, Bertrand; Kashiura, Masahiro; Kishihara, Yuki; Shinzato, Yutaro; Koike, Midori; Moriya, Takashi; Kotani, Yuki; Kondo, Natsuki; Sekine, Kosuke; Shime, Nobuaki; Morikane, Keita; Abe, Takayuki.
Affiliation
  • Yasuda H; Department of Emergency and Critical Care Medicine, Jichi Medical University Saimata Medical Center, Saitama, Japan.
  • Rickard CM; Department of Clinical Research Education and Training Unit, Keio University Hospital Clinical and Translational Research Center (CTR), Tokyo, Japan.
  • Mimoz O; School of Nursing, Midwifery and Social Work, UQ Centre for Clinical Research, The University of Queensland, QLD, Australia.
  • Marsh N; School of Nursing and Midwifery; Alliance for Vascular Access Teaching and Research, Griffith University, Nathan, QLD, Australia.
  • Schults JA; School of Nursing, Midwifery and Social Work, UQ Centre for Clinical Research, The University of Queensland, QLD, Australia.
  • Drugeon B; School of Nursing and Midwifery; Alliance for Vascular Access Teaching and Research, Griffith University, Nathan, QLD, Australia.
  • Kashiura M; Herston Infectious Diseases Institute; Nursing and Midwifery Research Centre, Royal Brisbane and Women's Hospital, Metro North Health, Herston, QLD, Australia.
  • Kishihara Y; CHU de Poitiers, Emergency Department and prehospital care, Poitiers, France.
  • Shinzato Y; University of Poitiers, INSERM U1070, Pharmacology of antimicrobial agents and antibiotics resistance (PHAR2), Poitiers, France.
  • Koike M; University of Poitiers, Faculty of Medicine and Pharmacy, Poitiers, France.
  • Moriya T; School of Nursing, Midwifery and Social Work, UQ Centre for Clinical Research, The University of Queensland, QLD, Australia.
  • Kotani Y; School of Nursing and Midwifery; Alliance for Vascular Access Teaching and Research, Griffith University, Nathan, QLD, Australia.
  • Kondo N; Herston Infectious Diseases Institute; Nursing and Midwifery Research Centre, Royal Brisbane and Women's Hospital, Metro North Health, Herston, QLD, Australia.
  • Sekine K; School of Nursing, Midwifery and Social Work, UQ Centre for Clinical Research, The University of Queensland, QLD, Australia.
  • Shime N; School of Nursing and Midwifery; Alliance for Vascular Access Teaching and Research, Griffith University, Nathan, QLD, Australia.
  • Morikane K; Herston Infectious Diseases Institute; Nursing and Midwifery Research Centre, Royal Brisbane and Women's Hospital, Metro North Health, Herston, QLD, Australia.
  • Abe T; CHU de Poitiers, Emergency Department and prehospital care, Poitiers, France.
J Crit Care Med (Targu Mures) ; 10(3): 232-244, 2024 Jul.
Article in En | MEDLINE | ID: mdl-39108413
ABSTRACT

Introduction:

Early and accurate identification of high-risk patients with peripheral intravascular catheter (PIVC)-related phlebitis is vital to prevent medical device-related complications. Aim of the study This study aimed to develop and validate a machine learning-based model for predicting the incidence of PIVC-related phlebitis in critically ill patients. Materials and

methods:

Four machine learning models were created using data from patients ≥ 18 years with a newly inserted PIVC during intensive care unit admission. Models were developed and validated using a 73 split. Random survival forest (RSF) was used to create predictive models for time-to-event outcomes. Logistic regression with least absolute reduction and selection operator (LASSO), random forest (RF), and gradient boosting decision tree were used to develop predictive models that treat outcome as a binary variable. Cox proportional hazards (COX) and logistic regression (LR) were used as comparators for time-to-event and binary outcomes, respectively.

Results:

The final cohort had 3429 PIVCs, which were divided into the development cohort (2400 PIVCs) and validation cohort (1029 PIVCs). The c-statistic (95% confidence interval) of the models in the validation cohort for discrimination were as follows RSF, 0.689 (0.627-0.750); LASSO, 0.664 (0.610-0.717); RF, 0.699 (0.645-0.753); gradient boosting tree, 0.699 (0.647-0.750); COX, 0.516 (0.454-0.578); and LR, 0.633 (0.575-0.691). No significant difference was observed among the c-statistic of the four models for binary outcome. However, RSF had a higher c-statistic than COX. The important predictive factors in RSF included inserted site, catheter material, age, and nicardipine, whereas those in RF included catheter dwell duration, nicardipine, and age.

Conclusions:

The RSF model for the survival time analysis of phlebitis occurrence showed relatively high prediction performance compared with the COX model. No significant differences in prediction performance were observed among the models with phlebitis occurrence as the binary outcome.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Crit Care Med (Targu Mures) Year: 2024 Document type: Article Affiliation country: Japan Country of publication: Poland

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Crit Care Med (Targu Mures) Year: 2024 Document type: Article Affiliation country: Japan Country of publication: Poland