Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12188/30789
Title: Investigating Presence of Ethnoracial Bias in Clinical Data using Machine Learning
Authors: Velichkovska, Bojana
Gjoreski, Hristijan
Denkovski, Daniel 
Kalendar, Marija 
Celi, Leo Anthony
Osmani, Venet
Keywords: Ethnoracial Bias
Clinical Data
Vital Signs
Machine Learning
Issue Date: Sep-2021
Project: WideHealth project - Horizon 2020, under grant agreement No 95227
Conference: 15th International Online Conference ETAI 2021
Abstract: An important target for machine learning research is obtaining unbiased results, which require addressing bias that might be present in the data as well as the methodology. This is of utmost importance in medical applications of machine learning, where trained models should be unbiased so as to result in systems that are widely applicable, reliable and fair. Since bias can sometimes be introduced through the data itself, in this paper we investigate the presence of ethnoracial bias in patients’ clinical data. We focus primarily on vital signs and demographic information and classify patient ethnoraces in subsets of two from the three ethnoracial groups (African Americans, Caucasians, and Hispanics). Our results show that ethnorace can be identified in two out of three patients, setting the initial base for further investigation of the complex issue of ehtnoracial bias.
URI: http://hdl.handle.net/20.500.12188/30789
Appears in Collections:Faculty of Electrical Engineering and Information Technologies: Conference Papers

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03_Investigating Presence of Ethnoracial Bias in Clinical Data using Machine Learning (ETAI 2021) final.pdfAn important target for machine learning research is obtaining unbiased results, which require addressing bias that might be present in the data as well as the methodology. This is of utmost importance in medical applications of machine learning, where trained models should be unbiased so as to result in systems that are widely applicable, reliable and fair. Since bias can sometimes be introduced through the data itself, in this paper we investigate the presence of ethnoracial bias in patients’ clinical data. We focus primarily on vital signs and demographic information and classify patient ethnoraces in subsets of two from the three ethnoracial groups (African Americans, Caucasians, and Hispanics). Our results show that ethnorace can be identified in two out of three patients, setting the initial base for further investigation of the complex issue of ehtnoracial bias.476.86 kBAdobe PDFView/Open
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