优化干细胞冷冻保存方案的贝叶斯方法

S. Sambu
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引用次数: 1

摘要

低温保存是困扰协议对齐的挑战,跨越广泛的细胞类型和工艺变量。通过对先前发表的冷冻保存数据(样本均值和标准误差)进行横断面评估作为初步元数据,进行决策树学习分析(DTLA),以了解目标存活和基于不同方法的优化修剪方法。简而言之,在选择方法的决策过程中有一个明确的方向,其中关键的选择是冷却速度,一方面是骤降温度,另一方面是生物材料的选择,复合材料(糖和蛋白质)的使用,加载程序和3D支架中的细胞位置。其次,使用机器学习和通过Na\ \ ive Bayes Classification (NBC)方法的广义方法,这些元数据被用来为隐式记录在元数据中的组合方法开发后验概率。这些结果表明,使用概率启发技术开发的新协议选择可以发现与多个一维优化物理协议一致的改进协议。总之,本文建议使用DTLA模型和随后的NBC,通过综合方法改进现代低温保存技术。关键词:三维低温保存,决策树学习(DTL),糖,小鼠胚胎干细胞,元数据,纳维贝叶斯分类器(NBC)
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A Bayesian Approach to Optimizing Stem Cell Cryopreservation protocols
Cryopreservation is beset with the challenge of protocol alignment across a wide range of cell types and process variables. By taking a cross-sectional assessment of previously published cryopreservation data (sample means and standard errors) as preliminary meta-data, a decision tree learning analysis (DTLA) was performed to develop an understanding of target survival and optimized pruning methods based on different approaches. Briefly, a clear direction on the decision process for selection of methods was developed with key choices being the cooling rate, plunge temperature on the one hand and biomaterial choice, use of composites (sugars and proteins), loading procedure and cell location in 3D scaffold on the other. Secondly, using machine learning and generalized approaches via the Na\"ive Bayes Classification (NBC) approach, these metadata were used to develop posterior probabilities for combinatorial approaches that were implicitly recorded in the metadata. These latter results showed that newer protocol choices developed using probability elicitation techniques can unearth improved protocols consistent with multiple unidimensional optimized physical protocols. In conclusion, this article proposes the use of DTLA models and subsequently NBC for the improvement of modern cryopreservation techniques through an integrative approach. Keywords: 3D cryopreservation, decision-tree learning (DTL), sugars, mouse embryonic stem cells, meta-data, Na\"ive Bayes Classifier (NBC)
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