Bradshaw William S, Nelson Jennifer, Adams Byron J, Bell John D
Department of Microbiology and Molecular Biology, Brigham Young University, Provo, UT 84602.
Department of Physiology and Developmental Biology, Brigham Young University, Provo, UT 84602.
J Microbiol Biol Educ. 2017 Apr 21;18(1). doi: 10.1128/jmbe.v18i1.1272. eCollection 2017 Apr.
This study reports part of a long-term program to help students improve scientific reasoning using higher-order cognitive tasks set in the discipline of cell biology. This skill was assessed using problems requiring the construction of valid conclusions drawn from authentic research data. We report here efforts to confirm the hypothesis that data interpretation is a complex, multifaceted exercise. Confirmation was obtained using a statistical treatment showing that various such problems rank students differently-each contains a unique set of cognitive challenges. Additional analyses of performance results have allowed us to demonstrate that individuals differ in their capacity to navigate five independent generic elements that constitute successful data interpretation: biological context, connection to course concepts, experimental protocols, data inference, and integration of isolated experimental observations into a coherent model. We offer these aspects of scientific thinking as a "data analysis skills inventory," along with usable sample problems that illustrate each element. Additionally, we show that this kind of reasoning is rigorous in that it is difficult for most novice students, who are unable to intuitively implement strategies for improving these skills. Instructors armed with knowledge of the specific challenges presented by different types of problems can provide specific helpful feedback during formative practice. The use of this instructional model is most likely to require changes in traditional classroom instruction.
本研究报告了一个长期项目的部分内容,该项目旨在通过细胞生物学学科中设置的高阶认知任务来帮助学生提高科学推理能力。这项技能通过要求学生根据真实研究数据得出有效结论的问题来进行评估。我们在此报告为证实“数据解读是一项复杂、多方面的活动”这一假设所做的努力。通过统计处理获得了证实,结果表明各类此类问题对学生的排名不同——每个问题都包含一组独特的认知挑战。对成绩结果的进一步分析使我们能够证明,个体在驾驭构成成功数据解读的五个独立通用要素方面的能力存在差异,这五个要素分别是:生物学背景、与课程概念的联系、实验方案、数据推断以及将孤立的实验观察结果整合为一个连贯模型。我们将科学思维的这些方面作为一份“数据分析技能清单”呈现出来,并附上说明每个要素的可用示例问题。此外,我们表明这种推理是严谨的,因为对于大多数新手学生来说难度较大,他们无法直观地运用提高这些技能的策略。了解不同类型问题所带来的具体挑战的教师可以在形成性练习期间提供具体的有益反馈。使用这种教学模式很可能需要改变传统的课堂教学。