| Literature DB >> 28408407 |
Xinmiao Yang1, Mark R Hartman1, Kristin T Harrington1, Candice M Etson1, Matthew B Fierman1, Donna K Slonim2, David R Walt3.
Abstract
With the development of new sequencing and bioinformatics technologies, concepts relating to personal genomics play an increasingly important role in our society. To promote interest and understanding of sequencing and bioinformatics in the high school classroom, we developed and implemented a laboratory-based teaching module called "The Genetics of Race." This module uses the topic of race to engage students with sequencing and genetics. In the experimental portion of this module, students isolate their own mitochondrial DNA using standard biotechnology techniques and collect next-generation sequencing data to determine which of their classmates are most and least genetically similar to themselves. We evaluated the efficacy of this module by administering a pretest/posttest evaluation to measure student knowledge related to sequencing and bioinformatics, and we also conducted a survey at the conclusion of the module to assess student attitudes. Upon completion of our Genetics of Race module, students demonstrated significant learning gains, with lower-performing students obtaining the highest gains, and developed more positive attitudes toward scientific research.Entities:
Mesh:
Year: 2017 PMID: 28408407 PMCID: PMC5459240 DOI: 10.1187/cbe.16-09-0281
Source DB: PubMed Journal: CBE Life Sci Educ ISSN: 1931-7913 Impact factor: 3.325
Summary of lessons in the Genetics of Race module
| Classroom visit | Description |
|---|---|
| Lesson 1: Introduction | Clarify definitions related to race and ancestry Introduce the genetics of race experiment |
| Lesson 2: Sample collection | Student extraction of DNA from their buccal swab samples Transport samples to Tufts University for final processing and sequencing |
| Lesson 3: Sequencing by synthesis | Review DNA synthesis Discuss the modifications to DNA synthesis that enable modern sequencing technologies |
| Lesson 4: Data analysis | Analyze DNA sequence information, bioinformatics intro Practice analyzing example DNA sequences |
| Lesson 5: Results and discussion | Distribute student results Share and compare conclusions |
FIGURE 1.Summary of sample processing and data analysis steps for the Genetics of Race experiment. These steps are performed after students obtain buccal swabs and extract their DNA in the classroom. Section 1 illustrates the amplification of the desired region of mitochondrial DNA for each student sample followed by further sample preparation and sequencing. Section 2 shows the alignment of multiple student sequences. In this example, only a short fragment of each student sequence is shown. Section 3 shows the calculated genetic similarity between each student based on the alignment in section 2. The most and least similar values are provided to each student. These steps are also discussed in the Supplemental Material.
FIGURE 2.Sample results as received by students in the Genetics of Race experiment. Students who do not work with their own samples or students whose samples could not be sequenced due to technical difficulties, instead receive results corresponding to BioSeq personnel or their teacher. These results will indicate the classmates with the most and least genetic similarity based solely on the two short regions of mitochondrial DNA sequenced in the experiment. If more than one student is tied for highest or lowest genetic similarity, the names of all tied students will be listed.
Summary of pre/post knowledge change
| Test | Mean pretest score | Mean posttest score | % Gain | Effect size (Cohen’s |
|---|---|---|---|---|
| Sequencing and ethics (maximum = 5) | 1.81 | 3.31 | 82.87 | 1.21 |
| Bioinformatics (maximum = 5) | 1.06 | 2.78 | 162.26 | 1.73 |
| Test totals (maximum = 10) | 2.88 | 6.09 | 111.46 | 1.72 |
Summary of attitudinal changes
| Construct | Mean gain | SD | % Gain | Effect size (Cohen’s | Reliability (Cronbach’s α) |
|---|---|---|---|---|---|
| Knowledge self-assessment | 11.56 | 5.68 | 89 | 2.88 | 0.884 |
| Skills self-assessment | 7.83 | 5.20 | 69 | 2.13 | 0.771 |
| Self-efficacy | 10.30 | 7.89 | 47 | 1.85 | 0.954 |
| Total | 29.70 | 16.24 | 64 | 2.59 | 0.955 |
FIGURE 3.Left, density plot showing overall scores for the pre and post knowledge tests. The shift in distribution indicates increases in knowledge. Right, correlation between pre/posttest gain and initial performance on the pretest. Students who performed lower on the initial pretest demonstrated the highest gains, reflecting a narrowing of the achievement gap.
FIGURE 4.Box plot showing attitudinal gains following the Genetics of Race module. Results were based on a survey conducted after the conclusion of the module in which students self-reported their attitudes before and after the intervention.