This project aims to investigate the role of insurance in managing the risks of gene editing technologies. It will analyze the potential liabilities and risks associated with gene editing applications, evaluate the current insurance landscape in addressing these risks, and propose strategies for leveraging insurance to effectively manage the risks of gene editing technologies.
The emergence of gene editing technologies, such as CRISPR-Cas9, presents unprecedented opportunities for advancing healthcare, agriculture, and biotechnology. However, these technologies also pose unique risks and ethical considerations, including potential unintended consequences, regulatory challenges, and liability issues. Insurance can play a crucial role in managing these risks by providing financial protection, fostering responsible innovation, and addressing liability concerns. This project seeks to comprehensively investigate the role of insurance in managing the risks of gene editing technologies and provide insights into the development of effective insurance mechanisms to support responsible gene editing practices.
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