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Can Medical AI Bridge the Gender Gap for Sustainable Healthcare?
0
Zitationen
4
Autoren
2024
Jahr
Abstract
This chapter aims to investigate how medical AI can contribute positively towards the advancement of gender equality concerning the United Nations' Sustainable Development Goal 5. They stress the fact that AI models used in healthcare must be trustworthy, lawful, ethical, and robust. However, the large differences in data between males' and females' participation in clinical trials and medication consumption could severely limit the current AI applications. These gaps create biased, limited, and inefficient AI outputs, greatly impacting women's health. The chapter emphasizes the need to overcome this deficit by producing and utilizing data corresponding to female body characteristics, using examples from various cases. By doing so, we can enhance artificial intelligence in medicine, promoting gender equity in pharmacological treatment.
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