Yong Xia , Wenbo Zheng , Hao Xue , Minxuan Feng , Qinxin Zhang , Bowen Li , Xin Li , Huan Qi , Yan Liu , Tony Badrick , Lei Zheng , Ling Ji
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引用次数: 0
Abstract
Objective
Patient-based real-time quality control (PBRTQC) utilizes patient test results to continuously monitor laboratory test quality, addressing issues like discontinuities and matrix effects of traditional internal quality control. However, its clinical performance still requires enhancement. This study combined neural networks (NN) and joint probability analysis (NN-PBRTQC) to improve the clinical performance of PBRTQC.
Methods
Data were collected from Peking University Shenzhen Hospital and Nanfang Hospital Southern Medical University, which included a series of analytes. A neural network model was trained to predict the test results by integrating patient demographics. Residuals between the expected and actual test results were inputs for statistical process control algorithms to monitor analytical errors. Additionally, an intelligent alarm system using joint probability analysis was developed to reduce the false alarm rate (FAR). The performance of NN-PBRTQC was evaluated using FAR, and the number of patients until error detection was compared to traditional PBRTQC.
Results
NN-PBRTQC significantly enhanced the clinical performance of PBRTQC. Under the same desired FAR (DFAR) of 0.1 %, NN-PBRTQC required 64 % fewer samples for error detection than traditional PBRTQC for the analytes, which improved the sensitivity of error detection.
Conclusion
NN-PBRTQC provides a novel method for PBRTQC, effectively addressing sample variations and false alarms. It significantly reduces the false alarm rate and the sample size required for error detection, accelerating the implementation of PBRTQC in laboratories.
期刊介绍:
The Official Journal of the International Federation of Clinical Chemistry and Laboratory Medicine (IFCC)
Clinica Chimica Acta is a high-quality journal which publishes original Research Communications in the field of clinical chemistry and laboratory medicine, defined as the diagnostic application of chemistry, biochemistry, immunochemistry, biochemical aspects of hematology, toxicology, and molecular biology to the study of human disease in body fluids and cells.
The objective of the journal is to publish novel information leading to a better understanding of biological mechanisms of human diseases, their prevention, diagnosis, and patient management. Reports of an applied clinical character are also welcome. Papers concerned with normal metabolic processes or with constituents of normal cells or body fluids, such as reports of experimental or clinical studies in animals, are only considered when they are clearly and directly relevant to human disease. Evaluation of commercial products have a low priority for publication, unless they are novel or represent a technological breakthrough. Studies dealing with effects of drugs and natural products and studies dealing with the redox status in various diseases are not within the journal''s scope. Development and evaluation of novel analytical methodologies where applicable to diagnostic clinical chemistry and laboratory medicine, including point-of-care testing, and topics on laboratory management and informatics will also be considered. Studies focused on emerging diagnostic technologies and (big) data analysis procedures including digitalization, mobile Health, and artificial Intelligence applied to Laboratory Medicine are also of interest.