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risk factors associated with specific diseases or conditions. This can aid in proactive
public health interventions, resource allocation, and strategic planning. ML-based
CDSS can also help in optimizing healthcare workflows, reducing medical errors,
and improving efficiency in healthcare delivery. By harnessing the power of ML,
healthcare systems can work towards achieving cost-effective, patient-centered care
and population health management.
Overall, the integration of ML into CDSS holds the potential to revolutionize
clinical decision-making, enhance patient care, and optimize healthcare systems. It
can empower healthcare providers, patients, and healthcare institutions with data-
driven insights and personalized recommendations, leading to improved healthcare
outcomes and a more efficient and effective healthcare ecosystem.
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