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Leukemia Prediction Using Sparse Logistic Regression

机译:基于稀疏Logistic回归的白血病预测

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摘要

We describe a supervised prediction method for diagnosis of acute myeloid leukemia (AML) from patient samples based on flow cytometry measurements. We use a data driven approach with machine learning methods to train a computational model that takes in flow cytometry measurements from a single patient and gives a confidence score of the patient being AML-positive. Our solution is based on an regularized logistic regression model that aggregates AML test statistics calculated from individual test tubes with different cell populations and fluorescent markers. The model construction is entirely data driven and no prior biological knowledge is used. The described solution scored a 100% classification accuracy in the DREAM6/FlowCAP2 Molecular Classification of Acute Myeloid Leukaemia Challenge against a golden standard consisting of 20 AML-positive and 160 healthy patients. Here we perform a more extensive validation of the prediction model performance and further improve and simplify our original method showing that statistically equal results can be obtained by using simple average marker intensities as features in the logistic regression model. In addition to the logistic regression based model, we also present other classification models and compare their performance quantitatively. The key benefit in our prediction method compared to other solutions with similar performance is that our model only uses a small fraction of the flow cytometry measurements making our solution highly economical.
机译:我们描述了一种基于流式细胞仪测量从患者样本中诊断急性髓细胞性白血病(AML)的有监督的预测方法。我们使用数据驱动的方法和机器学习方法来训练计算模型,该模型接受来自单个患者的流式细胞仪测量结果,并给出该患者AML阳性的置信度得分。我们的解决方案基于规则化Logistic回归模型,该模型汇总了从具有不同细胞群和荧光标记的单个试管中计算出的AML测试统计数据。模型的构建完全由数据驱动,不使用任何先验的生物学知识。相对于由20名AML阳性和160名健康患者组成的黄金标准,上述解决方案在DREAM6 / FlowCAP2急性髓细胞白血病挑战分子分类中的分类准确度达到100%。在这里,我们对预测模型的性能进行了更广泛的验证,并进一步改进和简化了我们的原始方法,该方法表明可以通过使用简单的平均标记强度作为逻辑回归模型的特征来获得统计上相等的结果。除了基于逻辑回归的模型外,我们还介绍了其他分类模型并定量比较其性能。与具有类似性能的其他解决方案相比,我们的预测方法的主要优势在于我们的模型仅使用了流式细胞仪测量的一小部分,因此我们的解决方案非常经济。

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