| Literature DB >> 34984579 |
Sheela Kolluri1, Jianchang Lin2, Rachael Liu2, Yanwei Zhang2, Wenwen Zhang2.
Abstract
Over the past decade, artificial intelligence (AI) and machine learning (ML) have become the breakthrough technology most anticipated to have a transformative effect on pharmaceutical research and development (R&D). This is partially driven by revolutionary advances in computational technology and the parallel dissipation of previous constraints to the collection/processing of large volumes of data. Meanwhile, the cost of bringing new drugs to market and to patients has become prohibitively expensive. Recognizing these headwinds, AI/ML techniques are appealing to the pharmaceutical industry due to their automated nature, predictive capabilities, and the consequent expected increase in efficiency. ML approaches have been used in drug discovery over the past 15-20 years with increasing sophistication. The most recent aspect of drug development where positive disruption from AI/ML is starting to occur, is in clinical trial design, conduct, and analysis. The COVID-19 pandemic may further accelerate utilization of AI/ML in clinical trials due to an increased reliance on digital technology in clinical trial conduct. As we move towards a world where there is a growing integration of AI/ML into R&D, it is critical to get past the related buzz-words and noise. It is equally important to recognize that the scientific method is not obsolete when making inferences about data. Doing so will help in separating hope from hype and lead to informed decision-making on the optimal use of AI/ML in drug development. This manuscript aims to demystify key concepts, present use-cases and finally offer insights and a balanced view on the optimal use of AI/ML methods in R&D.Entities:
Keywords: Artificial intelligence; Clinical trial design; Drug development; Machine learning; Precision medicine; Predictive modeling; Probability of success; Risk-based monitoring
Mesh:
Year: 2022 PMID: 34984579 PMCID: PMC8726514 DOI: 10.1208/s12248-021-00644-3
Source DB: PubMed Journal: AAPS J ISSN: 1550-7416 Impact factor: 3.603
Fig. 1Chronology of AI and ML
below provides simple descriptors of the basic terminology related to AI, ML, and related techniques
| General AI | Systems that have human-like behavior in thought and action |
|---|---|
| ML | The practice of using algorithms to parse data, learn from data, and then make predictions about unseen data without being explicitly programmed to do so |
| Neural Network (NN) | A highly parameterized model, inspired by the biological neural networks that constitute the human brain |
| Deep learning (DL) | A subfield of ML where a multi-layered (deep) architecture is used to map the relationships between inputs or observed features and outcomes |
| Supervised learning | A subfield of ML that uses labeled datasets to train algorithms that classify data or predict outcomes accurately |
| Unsupervised learning | A subfield of ML that uses unlabeled data to discover patterns that help solve clustering or association problems |
| Semi-supervised learning | A subfield of ML that combines a small amount of labeled data with a large amount of unlabeled data during training |
| Reinforcement learning | A subfield of ML that is concerned with taking a sequence of actions in a previously unknown environment in order to maximize some form of cumulative reward |
| Bayesian probabilistic programming | A field in which Bayesian models are represented as programs, and inference, learning, and querying are operations that can be represented by programs as well |
| Bayesian nonparametric learning | The field of models and related Bayesian inference routines where the number of parameters grows with the data |
Fig. 2Brief overview of AI
Fig. 3Brief overview of supervised and unsupervised learning
Fig. 4Application of ML/AI based on the dimensionality of the data
Fig. 5Application of ML/AI based on various aspects of drug development