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A data mining approach to optimize pellets manufacturing process based on a decision tree algorithm

机译:一种基于决策树算法优化颗粒制造过程的数据挖掘方法

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The present study is focused on the thorough analysis of cause-effect relationships between pellet formulation characteristics (pellet composition as well as process parameters) and the selected quality attribute of the final product. The shape using the aspect ratio value expressed the quality of pellets. A data matrix for chemometric analysis consisted of 224 pellet formulations performed by means of eight different active pharmaceutical ingredients and several various excipients, using different extrusion/spheronization process conditions. The data set contained 14 input variables (both formulation and process variables) and one output variable (pellet aspect ratio). A tree regression algorithm consistent with the Quality by Design concept was applied to obtain deeper understanding and knowledge of formulation and process parameters affecting the final pellet sphericity. The clear interpretable set of decision rules were generated. The spehronization speed, spheronization time, number of holes and water content of extrudate have been recognized as the key factors influencing pellet aspect ratio. The most spherical pellets were achieved by using a large number of holes during extrusion, a high spheronizer speed and longer time of spheronization. The described data mining approach enhances knowledge about pelletization process and simultaneously facilitates searching for the optimal process conditions which are necessary to achieve ideal spherical pellets, resulting in good flow characteristics. This data mining approach can be taken into consideration by industrial formulation scientists to support rational decision making in the field of pellets technology. (C) 2015 Elsevier B.V. All rights reserved.
机译:本研究专注于彻底分析颗粒制剂特性(颗粒组合物以及工艺参数)与最终产品的所选质量属性之间的致原因关系。使用纵横比值的形状表达了颗粒的质量。用于化学计量分析的数据矩阵由使用不同的挤出/球形工艺条件,通过八种不同的活性药物成分和几种各种赋形剂进行的224个颗粒制剂组成。数据集包含14个输入变量(既配方和处理变量)和一个输出变量(颗粒宽高比)。通过设计概念的质量一致的树回归算法用于获得影响最终颗粒球形的配方和工艺参数的更深层次的理解和知识。生成明确的可解释规则集。挤出物的尖峰速度,球形时间,孔数和含水量的含量和水含量被认为是影响颗粒纵横比的关键因素。通过在挤出过程中使用大量孔,高锭剂速度和较长的球体时间来实现最多的球形粒料。所描述的数据挖掘方法增强了关于造粒过程的知识,并同时便于寻找实现理想球形颗粒所必需的最佳过程条件,从而产生良好的流动特性。该数据采矿方法可以通过工业配方科学家来考虑,以支持颗粒技术领域的合理决策。 (c)2015 Elsevier B.v.保留所有权利。

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