Institute for Systems Biology, Seattle, US.
Centrum Wiskunde &Informatica, Amsterdam, The Netherlands.
Sci Rep. 2016 Nov 23;6:36812. doi: 10.1038/srep36812.
Mining large datasets using machine learning approaches often leads to models that are hard to interpret and not amenable to the generation of hypotheses that can be experimentally tested. We present 'Logic Optimization for Binary Input to Continuous Output' (LOBICO), a computational approach that infers small and easily interpretable logic models of binary input features that explain a continuous output variable. Applying LOBICO to a large cancer cell line panel, we find that logic combinations of multiple mutations are more predictive of drug response than single gene predictors. Importantly, we show that the use of the continuous information leads to robust and more accurate logic models. LOBICO implements the ability to uncover logic models around predefined operating points in terms of sensitivity and specificity. As such, it represents an important step towards practical application of interpretable logic models.
使用机器学习方法挖掘大型数据集通常会导致模型难以解释,并且不适合生成可以通过实验测试的假设。我们提出了“二进制输入到连续输出的逻辑优化”(LOBICO),这是一种计算方法,可以推断出二进制输入特征的小而易于解释的逻辑模型,这些模型可以解释连续输出变量。将 LOBICO 应用于大型癌细胞系面板,我们发现多个突变的逻辑组合比单个基因预测器更能预测药物反应。重要的是,我们表明使用连续信息可以产生稳健且更准确的逻辑模型。LOBICO 实现了根据灵敏度和特异性在预定义操作点周围发现逻辑模型的能力。因此,它代表了朝着实用可解释逻辑模型应用迈出的重要一步。