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Personalizing Medicine for Fake Drug Prevention With AI-Driven Digital Twins
2
Zitationen
5
Autoren
2025
Jahr
Abstract
As the day unfolds, we can no longer overemphasize on the negative impact of fake drugs in under-developed countries and in the whole world at large. The healthcare system has greatly been negatively affected by the illegal production of counterfeit drugs which results compromised patient safety, waste of money for healthcare, and causing lack of trust on the healthcare system in place. In this chapter on personalising medicine for fake drug prevention with AI-driven Digital Twin, digital twins are emerging as powerful tools. The virtual patient models combine multimodal data, such as clinical, genomic, and imaging information, in order to simulate an individual's health trajectory and response to treatment.
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