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Background: Delirium is prevalent in intensive care units (ICUs), often leading to adverse outcomes. Hypoactive delirium is particularly difficult to detect. Despite the development of new tools, the timely identification of hypoactive delirium remains clinically challenging due to its dynamic nature, lack of human resources, lack of reliable monitoring tools, and subtle clinical signs including hypovigilance. Machine learning models could support the identification of hypoactive delirium episodes by better detecting episodes of hypovigilance.
Objective: Develop an artificial intelligence prediction model capable of detecting hypovigilance events using routinely collected physiological data in the ICU.
Methods: This derivation study was conducted using data from a prospective observational cohort of eligible patients admitted to the ICU in Lévis, Québec, Canada. We included patients admitted to the ICU between October 2021 and June 2022 who were aged ≥18 years and had an anticipated ICU stay of ≥48 hours. ICU nurses identified hypovigilant states every hour using the Richmond Agitation and Sedation Scale (RASS) or the Ramsay Sedation Scale (RSS). Routine vital signs (heart rate, respiratory rate, blood pressure, and oxygen saturation), as well as other physiological and clinical variables (premature ventricular contractions, intubation, use of sedative medication, and temperature), were automatically collected and stored using a CARESCAPE Gateway (General Electric) or manually collected (for sociodemographic characteristics and medication) through chart review. Time series were generated around hypovigilance episodes for analysis. Random Forest, XGBoost, and Light Gradient Boosting Machine classifiers were then used to detect hypovigilant episodes based on time series analysis. Hyperparameter optimization was performed using a random search in a 10-fold group-based cross-validation setup. To interpret the predictions of the best-performing models, we conducted a Shapley Additive Explanations (SHAP) analysis. We report the results of this study using the TRIPOD+AI (Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis for machine learning models) guidelines, and potential biases were assessed using PROBAST (Prediction model Risk Of Bias ASsessment Tool).
Results: Out of 136 potentially eligible participants, data from 30 patients (mean age 69 y, 63% male) were collected for analysis. Among all participants, 30% were admitted to the ICU for surgical reasons. Following data preprocessing, the study included 1493 hypovigilance episodes and 764 nonhypovigilant episodes. Among the 3 models evaluated, Light Gradient Boosting Machine demonstrated the best performance. It achieved an average accuracy of 68% to detect hypovigilant episodes, with a precision of 76%, a recall of 74%, an area under the curve (AUC) of 60%, and an F1-score of 69%. SHAP analysis revealed that intubation status, respiratory rate, and noninvasive systolic blood pressure were the primary drivers of the model's predictions.
Conclusions: All classifiers produced precision and recall values that show potential for further development, with slightly different yet comparable performances in classifying hypovigilant episodes. Machine learning algorithms designed to detect hypovigilance have the potential to support early detection of hypoactive delirium in patients in the ICU.
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http://dx.doi.org/10.2196/60885 | DOI Listing |
Ann Afr Med
September 2025
Department of Anaesthesiology, Rajendra Institute of Medical Sciences, Ranchi, Jharkhand, India.
Introduction: Delirium, a common acute brain dysfunction in older adults, features rapid changes in attention, awareness, and thinking that fluctuate. It presents diversely with altered activity levels and sleep. Postoperative delirium (POD), often seen in the postanesthesia care unit, is a temporary mental status change, with hypoactivity being common.
View Article and Find Full Text PDFBrain Sci
August 2025
Department and Clinic of Adult Psychiatry, Faculty of Medical Sciences, Medical University of Silesia, Ziolowa 45, 40-635 Katowice, Poland.
Background and aim of this review: The ongoing opioid epidemic underscores the urgent need for innovative pharmacological and behavioral interventions to mitigate the impact of opioid use disorder (OUD). This review aims to explore theoretical overlaps between the neurobiological mechanisms underlying OUD development and the pharmacodynamic profile of methylphenidate (MPH). Particular attention is given to the potential shared molecular targets, safety considerations, and therapeutic implications of MPH use in this clinical context.
View Article and Find Full Text PDFJMIR AI
August 2025
Centre de recherche intégrée pour un système apprenant en santé et services sociaux, Centre intégré de santé et de services sociaux de Chaudière-Appalaches, Lévis, QC, Canada.
Background: Delirium is prevalent in intensive care units (ICUs), often leading to adverse outcomes. Hypoactive delirium is particularly difficult to detect. Despite the development of new tools, the timely identification of hypoactive delirium remains clinically challenging due to its dynamic nature, lack of human resources, lack of reliable monitoring tools, and subtle clinical signs including hypovigilance.
View Article and Find Full Text PDFInd Psychiatry J
May 2025
Department of Psychiatry, MGIMS, Sevagram, Maharashtra, India.
Background: Delirium, an acute and often fluctuating disorder of attention and cognition, poses significant challenges in clinical care due to its varied presentation and complex etiological factors. In rural healthcare settings, where resources and awareness are limited, delirium is frequently under-recognized and inadequately managed.
Aim: To investigate the factors associated with and types of delirium and their correlation with sociodemographic profiles in hospitalized patients at a tertiary care rural hospital in Central India.
Support Care Cancer
August 2025
Department of Palliative Care Team, Palliative and Supportive Care, National Hospital Organization Kyushu Cancer Center, Fukuoka, Japan.
Purpose: The stability of delirium motor subtypes in palliative care is unknown. We examined the longitudinal changes in delirium motor subtypes during palliative care unit stay.
Methods: We performed a secondary analysis of a multicenter observational study involving patients with advanced cancer.