Using Hidden Markov Models to Determine Changes in Subject Data over Time, Studying the Immunoregulatory effect of Mesenchymal Stem Cells.

Edgar F Black, Luigi Marini, Ashwini Vaidya, Dora Berman, Melissa Willman, Dan Salomon, Amelia Bartholomew, Norma Kenyon, Kenton McHenry
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引用次数: 3

Abstract

A novel application of Hidden Markov Models is used to help research intended to test the immunuregulatory effects of mesenchymal stem cells in a cynomolgus monkey model of islet transplantation. The Hidden Markov Model, an unsupervised learning data mining technique, is used to automatically determine the postoperative day (POD) corresponding to a decrease of graft function, a possible sign of transplant rejection, on nonhuman primates after isolated islet cell transplant. Currently, decrease of graft function is being determined solely on experts' judgment. Further, information gathered from the evaluation of construted Hidden Markov Models is used as part of a clustering method to aggregate the nonhuman subjects into groups or clusters with the objective of finding similarities that could potentially help predict the health outcome of subjects undergoing postoperative care. Results on expert labeled data show the HMM to be accurate 60% of the time. Clusters based on the HMMs further suggest a possible correspondence between donor haplotypes matching and loss of function outcomes.

Abstract Image

Abstract Image

Abstract Image

利用隐马尔可夫模型确定受试者数据随时间的变化,研究间充质干细胞的免疫调节作用。
隐马尔可夫模型的一种新应用被用来帮助研究旨在测试间充质干细胞在食蟹猴胰岛移植模型中的免疫调节作用。隐马尔可夫模型(Hidden Markov Model)是一种无监督学习数据挖掘技术,用于自动确定非人灵长类动物离体胰岛细胞移植后移植功能下降对应的术后天数(POD),这可能是移植排斥的迹象。目前,移植物功能的下降仅靠专家的判断来确定。此外,从构建的隐马尔可夫模型的评估中收集的信息被用作聚类方法的一部分,将非人类受试者聚集到组或聚类中,目的是寻找可能有助于预测接受术后护理的受试者的健康结果的相似性。专家标记数据的结果表明HMM的准确率为60%。基于hmm的聚类进一步表明供体单倍型匹配和功能丧失结果之间可能存在对应关系。
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