Rapid adoption of AI could cause problems due to biased data

Kamilla Kan, Medical Device Analyst at GlobalData, comments: “According to GlobalData’s Global Emerging Technology Trends Survey 2020, more than three-quarters of companies believe AI has played a role in helping them survive the COVID-19 pandemic. While rapid adoption of AI/ML platforms is particularly beneficial for the healthcare industry, the lack of regulations and underlying data bias are concerning for a lot of healthcare professionals.

“Without strong policies and procedures to prevent bias in ML algorithms, there is a possibility that underlying bias in training data and existing human biases can be embedded into the ML-powered algorithms. In healthcare industry, when patient’s life is on the line, biased ML algorithms could result in potentially serious consequences. For instance, some algorithms designs could ignore how numerous factors such as sex, gender, age or the presence of other preliminary diseases impact the current state of health. Understandingly, many healthcare specialists are concerned that AI/ML-powered algorithms could negatively influence current patient care.

“Currently, the FDA regulatory framework is not designed to handle adaptive algorithms. Without proper regulation, AI/ML-powered algorithms could be trained on one demographic and used on a different one, which will produce biased and improper results.”

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