Network-based algorithms are used in most domains of research and industry in a wide variety of applications and are of great practical use. In this work, we demonstrate subnetwork detection based on multi-modal node features using a new Greedy Decision Forest for better interpretability. The latter will be a crucial factor in retaining experts and gaining their trust in such algorithms in the future. To demonstrate a concrete application example, we focus in this paper on bioinformatics and systems biology with a special focus on biomedicine. However, our methodological approach is applicable in many other domains as well. Systems biology serves as a very good example of a field in which statistical data-driven machine learning enables the analysis of large amounts of multi-modal biomedical data. This is important to reach the future goal of precision medicine, where the complexity of patients is modeled on a system level to best tailor medical decisions, health practices and therapies to the individual patient. Our glass-box approach could help to uncover disease-causing network modules from multi-omics data to better understand diseases such as cancer.
翻译:在这项工作中,我们展示了基于多模式节点特征的亚网络探测,利用新的贪婪决定森林进行更好的解释,后者将是留住专家并在未来获得对这类算法信任的关键因素。为了展示具体应用实例,我们在本文件中侧重于生物信息学和系统生物学,特别侧重于生物医学。然而,我们的方法方法也适用于许多其他领域。系统生物学是一个非常好的范例,在这个领域,统计数据驱动的机器学习能够分析大量多模式生物医学数据。这对于实现准确医学的未来目标非常重要,因为病人的复杂性是按系统水平建模的,以便最好地使医疗决定、保健做法和治疗适合病人个人。我们的玻璃箱方法可以帮助从多群体数据中发现致病网络模块,以便更好地了解癌症等疾病。