Diagnosis

AI technologies are being used to improve diagnosis within the healthcare system, by spotting early signs of disease, and determining the severity of patient needs. However, patients from marginalised groups are at risk of being misdiagnosed, and underserved in healthcare, as racially biased algorithms are less effective for non-white patients.

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Addressing Bias: Artificial Intelligence in Cardiovascular Medicine

Artificial intelligence (AI) is providing opportunities to transform cardiovascular medicine. As the leading cause of morbidity and mortality worldwide, cardiovascular disease is prevalent across all populations, with clear benefit to operationalise clinical and biomedical data to improve workflow… Medical paper which examines the potential of Artificial Intelligence in cardiovascular medicine; it could hugely benefit patient […]

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If AI is going to be the world’s doctor, it needs better textbooks

Artificial intelligence in healthcare currently reflects the same racial and gender biases as the culture at large. Those prejudices are built into the data. AI technologies are being used to diagnose Alzheimer’s disease by assessing speech. This technology could aid early diagnosis of Alzheimer’s. However, it’s evident that the algorithms behind this technology are trained […]

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Can we trust AI not to further embed racial bias and prejudice?

Heralded as an easy fix for health services under pressure, data technology is marching ahead unchecked. But is there a risk it could compound inequalities? Poppy Noor investigates. Journalist Poppy Noor investigates how black people with melanoma are being underserved in healthcare, and the link to the racist algorithms driving new cancer software. Most of […]

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