PUBLISHER: Allied Market Research | PRODUCT CODE: 1298445
PUBLISHER: Allied Market Research | PRODUCT CODE: 1298445
The global machine learning in pharmaceutical industry market is anticipated to reach $26.2 billion by 2031, growing from $1.2 billion in 2021 at a CAGR of 37.9 % from 2022 to 2031.
Machine learning (ML) in the pharmaceutical industry refers to the use of algorithms and statistical models to analyze data and make predictions or decisions related to drug development, clinical trials, regulatory approval, marketing, and sales.
Machine learning has become increasingly important in the pharmaceutical industry, particularly in the area of clinical trials. With the help of machine learning algorithms, pharmaceutical companies can analyze vast amounts of data and identify patterns. This can be particularly useful in the design of clinical trials, where machine learning can help optimize trial design and patient selection, potentially reducing costs and accelerating the development process. For example, machine learning algorithms can be used to analyze patient data and identify biomarkers that may indicate whether a particular drug is likely to be effective in treating a particular disease.
The regulatory constraints are one of the significant challenges that machine learning faces in the pharmaceutical industry. Machine learning algorithms are considered to be a new technology, and they need to meet strict regulatory requirements before they can be used in pharmaceutical applications. The regulatory authorities, such as the U.S. Food and Drug Administration (FDA), have established strict guidelines for the development and validation of machine learning algorithms. These guidelines require that the algorithms be validated on large and diverse datasets and demonstrate their accuracy, reliability, and safety. The process of validating machine learning algorithms can be time-consuming and costly, making it a challenge for companies to adopt these technologies.
The machine learning has a significant potential in the pharmaceutical industry, particularly in the area of drug safety. With the help of machine learning, it is possible to analyze vast amounts of data and identify patterns that can be used to predict potential safety issues before they occur. This can help pharmaceutical companies to take proactive measures to prevent adverse drug reactions, thereby improving patient safety. Machine learning algorithms can analyze a variety of data sources, including electronic health records, social media, and other sources, to detect adverse drug reactions. These algorithms can identify patterns that might not be apparent to human analysts, allowing pharmaceutical companies to detect potential safety issues before they become widespread.
The COVID-19 pandemic brought about significant changes in the pharmaceutical industry, including an increase in demand for innovative solutions, faster drug development processes, and more efficient supply chain management. Machine learning (ML) is one technology that is playing a crucial role in addressing these challenges and impacting the pharmaceutical industry. ML algorithms can analyze large amounts of data quickly and accurately, providing insights into disease patterns, identifying potential drug targets, and predicting the efficacy of drugs in development. ML has been used extensively in drug discovery and development, including identifying potential COVID-19 treatments and vaccines during the pandemic.
The key players profiled in this report include: Cyclica Inc., BioSymetrics Inc., Cloud Pharmaceuticals, Inc., Deep Genomics, Atomwise Inc., Alphabet Inc., NVIDIA Corporation, International Business Machines Corporation, Microsoft Corporation, and IBM.