Highly Precise Anomaly Detection Using Multivariate Statistical Process Control with Appropriate Scaling of Input Variables in Pharmaceutical Continuous Manufacturing.
Takuya Oishi, Takuya Nagato, Chikara Tsujikawa, Takuya Minamiguchi, Sanghong Kim
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引用次数: 0
Abstract
Multivariate statistical process control (MSPC) has attracted considerable attention as a monitoring method for pharmaceutical continuous manufacturing. However, there are few examples of its application in pharmaceutical manufacturing, and previous studies have shown high false-positive rates. One of the reasons is the use of inappropriate scaling factors. In pharmaceutical processes, the number of experiments for MSPC modeling tends to be small because the active pharmaceutical ingredients are expensive. Subsequently, the standard deviation, a common scaling factor for some variables, becomes too small, and the model may become sensitive to small variations. In this study, we have proposed methods for determining the appropriate scaling factors. These methods were applied to granulation and drying processes in pharmaceutical continuous manufacturing. The MSPC model can detect changes in the process parameters and raw materials used during continuous wet granulation and fluidized bed drying using the proposed scaling method.
期刊介绍:
The CPB covers various chemical topics in the pharmaceutical and health sciences fields dealing with biologically active compounds, natural products, and medicines, while BPB deals with a wide range of biological topics in the pharmaceutical and health sciences fields including scientific research from basic to clinical studies. For details of their respective scopes, please refer to the submission topic categories below.
Topics: Organic chemistry
In silico science
Inorganic chemistry
Pharmacognosy
Health statistics
Forensic science
Biochemistry
Pharmacology
Pharmaceutical care and science
Medicinal chemistry
Analytical chemistry
Physical pharmacy
Natural product chemistry
Toxicology
Environmental science
Molecular and cellular biology
Biopharmacy and pharmacokinetics
Pharmaceutical education
Chemical biology
Physical chemistry
Pharmaceutical engineering
Epidemiology
Hygiene
Regulatory science
Immunology and microbiology
Clinical pharmacy
Miscellaneous.