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Machine Learning for Predictive Modelling based on Small Data in Biomedical Engineering

机译:生物医学工程中基于小数据的机器学习预测模型

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Experimental datasets in bioengineering are commonly limited in size, thus rendering Machine Learning (ML) impractical for predictive modelling. Novel techniques of multiple runs for model development and surrogate data analysis for model validation are suggested for prediction of biomedical outcomes based on small datasets for classification and regression tasks. The proposed framework was applied to designing a Neural Network model for osteoarthritic bone fracture risk stratification, and a Decision Tree model for prediction of antibody-mediated kidney transplant rejection. Despite the small datasets (35 bone specimens and 80 kidney transplants), the two models achieved high accuracy of 98.3% and 85%, respectively.
机译:生物工程中的实验数据集通常受到大小限制,因此使得机器学习(ML)不适用于预测建模。提出了用于模型开发和替代数据分析以进行模型验证的多次运行的新技术,用于基于分类和回归任务的小型数据集的生物医学结果预测。所提出的框架被用于设计用于骨关节炎骨折风险分层的神经网络模型,以及用于预测抗体介导的肾移植排斥反应的决策树模型。尽管有少量数据集(35个骨标本和80个肾脏移植物),但这两个模型的准确率分别为98.3%和85%。

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