Development and Evaluation of a Proactive Monitoring Model for Adverse Drug Events in Patients With Pulmonary Arterial Hypertension Based on the Delphi and Real-World Data
Author(s)
Yibing Chen, Mater1, Guozhi Li, Ph.D.2, Mengdan Xu, Ph.D.2, Xingying Xu, Ph.D.1, Huimin Zou, Ph.D.1, Yunfeng Lai, Ph.D.1, Suzhen He, Ph.D.3.
1Guangzhou University of Chinese Medicine, Guangzhou, China, 2Guangdong Pharmaceutical University, Guangzhou, China, 3The First Affiliated Hospital of Guangzhou Medical University, Guangzhou, China.
1Guangzhou University of Chinese Medicine, Guangzhou, China, 2Guangdong Pharmaceutical University, Guangzhou, China, 3The First Affiliated Hospital of Guangzhou Medical University, Guangzhou, China.
OBJECTIVES: To develop and evaluate an innovative proactive monitoring model for adverse drug events (ADEs) in patients with pulmonary arterial hypertension (PAH), providing empirical support for rational medication use and improved health management.
METHODS: A framework of PAH-specific ADE triggers was established through two rounds of Delphi expert consultation and integrated into the China Hospital Pharmacovigilance System (CHPS) to build a proactive monitoring model. Electronic medical record (EMR) data from hospitalized PAH patients between January 1, 2022, and June 1, 2023, were collected. The model’s performance was assessed using detection rate, sensitivity, specificity, and positive predictive value (PPV).
RESULTS: A total of 24 triggers were finalized, with 626 PAH patients included. All triggers generated positive activations; 22 successfully detected ADEs. A total of 472 positive triggers were recorded, averaging 0.75 per patient. The overall PPV was 30.30%. In total, 143 ADEs were identified in 110 patients, yielding a detection rate of 17.57%. Trigger sensitivity was 98.21%, specificity was 72.57%, and the Youden Index was 0.71. During the same period, spontaneous reporting identified only two ADE cases (0.32%), significantly lower than the model-based detection rate (P < 0.001).
CONCLUSIONS: The proactive monitoring model demonstrated strong performance in identifying ADEs among PAH patients. It offers a feasible, evidence-based approach to enhancing hospital pharmacovigilance and promoting safer, more rational drug use in clinical practice.
METHODS: A framework of PAH-specific ADE triggers was established through two rounds of Delphi expert consultation and integrated into the China Hospital Pharmacovigilance System (CHPS) to build a proactive monitoring model. Electronic medical record (EMR) data from hospitalized PAH patients between January 1, 2022, and June 1, 2023, were collected. The model’s performance was assessed using detection rate, sensitivity, specificity, and positive predictive value (PPV).
RESULTS: A total of 24 triggers were finalized, with 626 PAH patients included. All triggers generated positive activations; 22 successfully detected ADEs. A total of 472 positive triggers were recorded, averaging 0.75 per patient. The overall PPV was 30.30%. In total, 143 ADEs were identified in 110 patients, yielding a detection rate of 17.57%. Trigger sensitivity was 98.21%, specificity was 72.57%, and the Youden Index was 0.71. During the same period, spontaneous reporting identified only two ADE cases (0.32%), significantly lower than the model-based detection rate (P < 0.001).
CONCLUSIONS: The proactive monitoring model demonstrated strong performance in identifying ADEs among PAH patients. It offers a feasible, evidence-based approach to enhancing hospital pharmacovigilance and promoting safer, more rational drug use in clinical practice.
Conference/Value in Health Info
2025-09, ISPOR Real-World Evidence Summit 2025, Tokyo, Japan
Value in Health Regional, Volume 49S (September 2025)
Code
RWD294
Topic Subcategory
Health & Insurance Records Systems
Disease
SDC: Systemic Disorders/Conditions (Anesthesia, Auto-Immune Disorders (n.e.c.), Hematological Disorders (non-oncologic), Pain)