Matiasz Nicholas J, Wood Justin, Wang Wei, Silva Alcino J, Hsu William
Medical Imaging Informatics Group, Department of Radiological Sciences, University of California, Los AngelesLos Angeles, CA, USA; Silva Laboratory, Departments of Neurobiology, Psychiatry, and Psychology, Integrative Center for Learning and Memory, Brain Research Institute, University of California, Los AngelesLos Angeles, CA, USA.
Silva Laboratory, Departments of Neurobiology, Psychiatry, and Psychology, Integrative Center for Learning and Memory, Brain Research Institute, University of California, Los AngelesLos Angeles, CA, USA; Department of Computer Science, Scalable Analytics Institute, University of California, Los AngelesLos Angeles, CA, USA.
Front Neuroinform. 2017 Feb 13;11:12. doi: 10.3389/fninf.2017.00012. eCollection 2017.
Computers help neuroscientists to analyze experimental results by automating the application of statistics; however, computer-aided experiment planning is far less common, due to a lack of similar quantitative formalisms for systematically assessing evidence and uncertainty. While ontologies and other Semantic Web resources help neuroscientists to assimilate required domain knowledge, experiment planning requires not only ontological but also epistemological (e.g., methodological) information regarding how knowledge was obtained. Here, we outline how epistemological principles and graphical representations of causality can be used to formalize experiment planning toward causal discovery. We outline two complementary approaches to experiment planning: one that quantifies evidence per the principles of convergence and consistency, and another that quantifies uncertainty using logical representations of constraints on causal structure. These approaches operationalize experiment planning as the search for an experiment that either maximizes evidence or minimizes uncertainty. Despite work in laboratory automation, humans must still plan experiments and will likely continue to do so for some time. There is thus a great need for experiment-planning frameworks that are not only amenable to machine computation but also useful as aids in human reasoning.
计算机通过使统计应用自动化来帮助神经科学家分析实验结果;然而,由于缺乏用于系统评估证据和不确定性的类似定量形式体系,计算机辅助实验规划要少见得多。虽然本体和其他语义网资源有助于神经科学家吸收所需的领域知识,但实验规划不仅需要关于如何获取知识的本体信息,还需要认识论(如方法论)信息。在此,我们概述了认识论原理和因果关系的图形表示如何用于将实验规划形式化以实现因果发现。我们概述了两种互补的实验规划方法:一种根据收敛性和一致性原理对证据进行量化,另一种使用对因果结构的约束的逻辑表示来量化不确定性。这些方法将实验规划操作化为寻找能使证据最大化或使不确定性最小化的实验。尽管在实验室自动化方面已有进展,但人类仍必须规划实验,并且在一段时间内可能会继续这样做。因此,非常需要不仅适用于机器计算而且有助于人类推理的实验规划框架。