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7 minutes read

Navigating the AI Disruption in Healthcare & Life Sciences: A Survival Guide

Praful Mehta

The AI revolution is poised to transform the pharmaceutical, medtech, life sciences, and healthcare industries by enhancing operational efficiencies, driving innovation, and accelerating time to market.

However, without proper strategies to ground data in these specific contexts, the potential benefits could lead to significant financial losses and cost overruns. Find out why below.

Importance of Industry-Specific Grounding

Importance of Industry-Specific Grounding

1. Relevance and Accuracy of Data

AI systems in healthcare rely heavily on data to learn and make decisions. If the data is not grounded in the specific context of the industry, the AI models may produce irrelevant or inaccurate results.

For example, an AI system trained on generic medical data might not understand the nuances of patient records, leading to incorrect diagnoses or treatment recommendations.

This can result in costly errors and inefficiencies. Similarly, for sales and commercial data, the context of industry specific nomenclature, syntax, and relationships across datasets is not taken into account then the results will be very poor and execution extremely costly.

2. Operational Efficiency

AI aims to improve operational efficiency by automating processes and providing insights. However, without industry-specific grounding, AI systems may fail to understand the unique operational challenges and requirements of the healthcare sector.

For instance, an AI system designed for general supply chain management might not account for the stringent storage and handling requirements of pharmaceuticals, leading to disruptions and inefficiencies.

3. Compliance and Regulations

The healthcare industry is subject to various regulations and compliance requirements. AI systems that are not grounded in the specific regulatory environment of healthcare may inadvertently lead to non-compliance, resulting in legal penalties and financial losses.

For example, AI systems in healthcare must adhere to regulations like HIPAA for data privacy and FDA guidelines for medical devices.

4. Customisation and Scalability

AI solutions need to be customised to fit the specific needs of the healthcare industry. Without proper grounding, the customisation process becomes more complex and costly. Additionally, scaling AI solutions across different segments of the industry can be challenging if the initial grounding is not robust and industry-specific.