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We need to avoid these in machine learning

Machine learning (ML) is powerful. It finds patterns and makes predictions from a sea of random data, assisting researchers and medical professionals to perform their job more efficiently. However, ML is also prone to make mistakes and deriving at false positives. Most of the time, algorithms are complex, making it hard for a human to…