Department of Pharmaceutical Quality Assurance, LJ Institute of Pharmacy, LJ University, Ahmedabad, Gujarat, India.
Department of Pharmaceutical Technology, LJ Institute of Pharmacy, LJ University, Ahmedabad, Gujarat, India.
Anal Methods. 2023 Jun 15;15(23):2785-2797. doi: 10.1039/d3ay00362k.
Artificial intelligence (AI) and machine learning (ML) gained tremendous growth and are rapidly becoming popular in various fields of prediction due to their potential abilities, accuracy, and speed. Machine learning algorithms employ historical data to analyze or predict information using patterns or trends. AI and ML were most employed in chromatographic predictions and particularly attractive options for liquid chromatography method development, as they can help achieve desired results faster, more accurately, and more efficiently. This review aims at exploring various AI and ML models employed in the determination of chromatographic characteristics. This review also aims to provide deep insight into reported artificial neural network (ANN) associated techniques which maintained better accuracy and significant possibilities for chromatographic characteristics prediction in liquid chromatography over classical linear models and also emphasizes the integration of a fuzzy system with an ANN, as this integrated study provides more efficient and accurate methods in chromatographic prediction than other linear models. This study also focuses on the retention prediction of a target molecule employing QSRR methodology combined with an ANN, highlighting a more effective technique than the QSRR alone. This approach showed the benefits of combining AI or ML algorithms with the QSRR to obtain more accurate retention predictions, emphasizing the potential of artificial intelligence and machine learning for overcoming adversities in analytical chemistry.
人工智能(AI)和机器学习(ML)由于其潜在的能力、准确性和速度,在各个预测领域得到了迅猛的发展,并迅速流行起来。机器学习算法利用历史数据通过模式或趋势来分析或预测信息。AI 和 ML 最常用于色谱预测,对于液相色谱方法开发来说是极具吸引力的选择,因为它们可以帮助更快、更准确、更高效地实现预期的结果。本综述旨在探讨用于确定色谱特性的各种 AI 和 ML 模型。本综述还旨在深入了解报道的人工神经网络(ANN)相关技术,这些技术在液相色谱中对色谱特性预测具有更好的准确性和显著的可能性,超过了经典线性模型,并强调了模糊系统与 ANN 的集成,因为这种集成研究在色谱预测方面提供了比其他线性模型更高效、更准确的方法。本研究还侧重于利用 ANN 结合 QSRR 方法对目标分子的保留进行预测,强调了这一方法比单独使用 QSRR 更有效。该方法展示了将 AI 或 ML 算法与 QSRR 相结合以获得更准确的保留预测的优势,强调了人工智能和机器学习在克服分析化学挑战方面的潜力。