Supporting cognition in systems biology analysis: findings on users' processes and design implications.

Barbara Mirel
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引用次数: 12

Abstract

Background: Current usability studies of bioinformatics tools suggest that tools for exploratory analysis support some tasks related to finding relationships of interest but not the deep causal insights necessary for formulating plausible and credible hypotheses. To better understand design requirements for gaining these causal insights in systems biology analyses a longitudinal field study of 15 biomedical researchers was conducted. Researchers interacted with the same protein-protein interaction tools to discover possible disease mechanisms for further experimentation.

Results: Findings reveal patterns in scientists' exploratory and explanatory analysis and reveal that tools positively supported a number of well-structured query and analysis tasks. But for several of scientists' more complex, higher order ways of knowing and reasoning the tools did not offer adequate support. Results show that for a better fit with scientists' cognition for exploratory analysis systems biology tools need to better match scientists' processes for validating, for making a transition from classification to model-based reasoning, and for engaging in causal mental modelling.

Conclusion: As the next great frontier in bioinformatics usability, tool designs for exploratory systems biology analysis need to move beyond the successes already achieved in supporting formulaic query and analysis tasks and now reduce current mismatches with several of scientists' higher order analytical practices. The implications of results for tool designs are discussed.

Abstract Image

支持系统生物学分析中的认知:关于用户过程和设计含义的发现。
背景:目前生物信息学工具的可用性研究表明,探索性分析工具支持一些与寻找感兴趣的关系相关的任务,但不能提供制定合理可信假设所需的深刻因果见解。为了更好地理解在系统生物学分析中获得这些因果见解的设计要求,对15名生物医学研究人员进行了纵向实地研究。研究人员使用相同的蛋白质-蛋白质相互作用工具进行相互作用,以发现可能的疾病机制,以便进行进一步的实验。结果:研究结果揭示了科学家探索性和解释性分析的模式,并揭示了工具对一些结构良好的查询和分析任务的积极支持。但对于一些科学家更复杂、更高阶的认知和推理方式,这些工具并没有提供足够的支持。结果表明,为了更好地适应科学家对探索性分析系统的认知,生物学工具需要更好地匹配科学家的验证过程,从分类到基于模型的推理的过渡,以及从事因果心理建模。结论:作为生物信息学可用性的下一个伟大前沿,探索性系统生物学分析的工具设计需要超越在支持公式化查询和分析任务方面已经取得的成功,现在减少当前与一些科学家高阶分析实践的不匹配。讨论了结果对工具设计的影响。
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