
Sign up to save your podcasts
Or


A graduate student from the University of Wisconsin–Madison is pushing for the disaggregation of data in research to better understand how individuals from different ethnic subgroups are represented as research participants and as researchers. Kao Lee Yang began writing and discussing the topic after the Howard Hughes Medical Institute’s Gilliam Fellowship for Advanced Study rejected her application for not meeting their racial and ethnic underrepresentation criteria, despite often being the only Hmong American scientist in many research spaces. Yang joins the podcast to discuss her opinion piece for STAT News, the problems with using aggregated data, and how the push to study individual ethnic groups could improve Alzheimer’s disease research.
Guest: Kao Lee Yang, MPA/PhD candidate in the Neuroscience and Public Policy Program and Bendlin Laboratory, University of Wisconsin–Madison
6:12 Why is combining all Asian people into one category detrimental? What is improved when this population is broken down by specific heritages and ethnicities?
8:40 How did people respond to your initial article in STAT News?
9:30 Why do you think it’s important to look at the individual ethnic groups within research?
11:17 How does the problem of aggregating data on Asian Americans impact the field of Alzheimer’s disease research?
Read Yang’s opinion piece, “I’m almost always the only Hmong American scientist in the room. Yet I was told I come from a group overrepresented in STEM,” on STAT News’ website.
Read Yang’s correspondence, “Disaggregate data on Asian Americans — for science and scientists,” on Nature’s website.
To learn about more Hmong researchers and scientists like Kao Lee Yang, follow the Twitter account she recently launched, @HmongInBioSci.
Read about Alzheimer’s disease research in the Bendlin Lab.
By Wisconsin Alzheimer‘s Disease Research Center4.6
134134 ratings
A graduate student from the University of Wisconsin–Madison is pushing for the disaggregation of data in research to better understand how individuals from different ethnic subgroups are represented as research participants and as researchers. Kao Lee Yang began writing and discussing the topic after the Howard Hughes Medical Institute’s Gilliam Fellowship for Advanced Study rejected her application for not meeting their racial and ethnic underrepresentation criteria, despite often being the only Hmong American scientist in many research spaces. Yang joins the podcast to discuss her opinion piece for STAT News, the problems with using aggregated data, and how the push to study individual ethnic groups could improve Alzheimer’s disease research.
Guest: Kao Lee Yang, MPA/PhD candidate in the Neuroscience and Public Policy Program and Bendlin Laboratory, University of Wisconsin–Madison
6:12 Why is combining all Asian people into one category detrimental? What is improved when this population is broken down by specific heritages and ethnicities?
8:40 How did people respond to your initial article in STAT News?
9:30 Why do you think it’s important to look at the individual ethnic groups within research?
11:17 How does the problem of aggregating data on Asian Americans impact the field of Alzheimer’s disease research?
Read Yang’s opinion piece, “I’m almost always the only Hmong American scientist in the room. Yet I was told I come from a group overrepresented in STEM,” on STAT News’ website.
Read Yang’s correspondence, “Disaggregate data on Asian Americans — for science and scientists,” on Nature’s website.
To learn about more Hmong researchers and scientists like Kao Lee Yang, follow the Twitter account she recently launched, @HmongInBioSci.
Read about Alzheimer’s disease research in the Bendlin Lab.

43,721 Listeners

14,548 Listeners

3,386 Listeners

2,059 Listeners

10,163 Listeners

1,474 Listeners

6,443 Listeners

12,769 Listeners

342 Listeners

688 Listeners

306 Listeners

264 Listeners

389 Listeners

8,202 Listeners

6,460 Listeners