ARTÍCULO
TITULO

Evaluation of AIML + HDR?A Course to Enhance Data Science Workforce Capacity for Hispanic Biomedical Researchers

Frances Heredia-Negron    
Natalie Alamo-Rodriguez    
Lenamari Oyola-Velazquez    
Brenda Nieves    
Kelvin Carrasquillo    
Harry Hochheiser    
Brian Fristensky    
Istoni Daluz-Santana    
Emma Fernandez-Repollet and Abiel Roche-Lima    

Resumen

Artificial intelligence (AI) and machine learning (ML) facilitate the creation of revolutionary medical techniques. Unfortunately, biases in current AI and ML approaches are perpetuating minority health inequity. One of the strategies to solve this problem is training a diverse workforce. For this reason, we created the course ?Artificial Intelligence and Machine Learning applied to Health Disparities Research (AIML + HDR)? which applied general Data Science (DS) approaches to health disparities research with an emphasis on Hispanic populations. Some technical topics covered included the Jupyter Notebook Framework, coding with R and Python to manipulate data, and ML libraries to create predictive models. Some health disparities topics covered included Electronic Health Records, Social Determinants of Health, and Bias in Data. As a result, the course was taught to 34 selected Hispanic participants and evaluated by a survey on a Likert scale (0?4). The surveys showed high satisfaction (more than 80% of participants agreed) regarding the course organization, activities, and covered topics. The students strongly agreed that the activities were relevant to the course and promoted their learning (3.71 ± 0.21). The students strongly agreed that the course was helpful for their professional development (3.76 ± 0.18). The open question was quantitatively analyzed and showed that seventy-five percent of the comments received from the participants confirmed their great satisfaction.

 Artículos similares

       
 
Ernesto Burgio, Prisco Piscitelli and Annamaria Colao    
The dominant pathogenic model, somatic mutation theory (SMT), considers carcinogenesis as a ?genetic accident? due to the accumulation of ?stochastic? DNA mutations. This model was proposed and accepted by the scientific community when cancer mainly affe... ver más

 
Itaru Miura, Masato Nagai, Masaharu Maeda, Mayumi Harigane, Senta Fujii, Misari Oe, Hirooki Yabe, Yuriko Suzuki, Hideto Takahashi, Tetsuya Ohira, Seiji Yasumura and Masafumi Abe    
Predictive factors including risk perception for mid-term mental health after a nuclear disaster remain unknown. The purpose of this study was to examine the association between perceived radiation risk and other factors at baseline and mid-term mental h... ver más

 
Jiaoli Cai, Denise N. Guerriere, Hongzhong Zhao and Peter C. Coyte    
The use of health services may vary across people with different socioeconomic statuses, and may be determined by many factors. The purposes of this study were (i) to examine the socioeconomic differences in the propensity and intensity of use for three ... ver más

 
Ana Laura Bautista-Olivas,Fidencio Cruz-Bautista,Clara Rosalía Álvarez-Chávez,Andrea Guadalupe Zavala-Reyna,Luz Amelia Sánchez-Landero,Juana Alvarado-Ibarra     Pág. 209 - 220
The condensation of water vapor is a very useful technique in mitigating the scarcity of water resources for human consumption; however, the quality of this water must meet the highest standards to avoid becoming a health hazard. The present study quanti... ver más
Revista: Atmósfera

 
Susanne M. Charlesworth, Jamie Beddow and Ernest O. Nnadi    
Pervious Paving Systems (PPS) are part of a sustainable approach to drainage in which excess surface water is encouraged to infiltrate through their structure, during which potentially toxic elements, such as metals and hydrocarbons are treated by biodeg... ver más