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Learning Oncogenetic Networks by Reducing to Mixed Integer Linear Programming

机译:通过简化为混合整数线性规划来学习癌基因网络

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摘要

Cancer can be a result of accumulation of different types of genetic mutations such as copy number aberrations. The data from tumors are cross-sectional and do not contain the temporal order of the genetic events. Finding the order in which the genetic events have occurred and progression pathways are of vital importance in understanding the disease. In order to model cancer progression, we propose Progression Networks, a special case of Bayesian networks, that are tailored to model disease progression. Progression networks have similarities with Conjunctive Bayesian Networks (CBNs) ,a variation of Bayesian networks also proposed for modeling disease progression. We also describe a learning algorithm for learning Bayesian networks in general and progression networks in particular. We reduce the hard problem of learning the Bayesian and progression networks to Mixed Integer Linear Programming (MILP). MILP is a Non-deterministic Polynomial-time complete (NP-complete) problem for which very good heuristics exists. We tested our algorithm on synthetic and real cytogenetic data from renal cell carcinoma. We also compared our learned progression networks with the networks proposed in earlier publications. The software is available on the website .
机译:癌症可能是由于不同类型的基因突变(如拷贝数畸变)积累而导致的。来自肿瘤的数据是横断面的,不包含遗传事件的时间顺序。寻找遗传事件发生的顺序和进展途径对于理解该疾病至关重要。为了对癌症进展进行建模,我们提出了Progressive Networks(贝叶斯网络的一种特殊情况),专门针对疾病进展进行建模。渐进网络与联合贝叶斯网络(CBNs)有相似之处,贝叶斯网络的一种变体也被提议用于模拟疾病进展。我们还描述了一种用于学习一般贝叶斯网络,尤其是渐进网络的学习算法。我们将学习贝叶斯和渐进网络的难题简化为混合整数线性规划(MILP)。 MILP是一个不确定的多项式时间完全(NP-complete)问题,对于该问题存在非常好的启发式方法。我们对来自肾细胞癌的合成和真实细胞遗传学数据测试了我们的算法。我们还将学习的进步网络与早期出版物中提出的网络进行了比较。该软件可从网站上获得。

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