Global Healthcare Private Equity Report
Generative AI Will Transform Healthcare
Generative AI Will Transform Healthcare
A once-in-a-generation technology surges into a centuries-old industry.
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- Summarize with Generative AI
Global Healthcare Private Equity Report
A once-in-a-generation technology surges into a centuries-old industry.
Este artigo faz parte do Relatório de Fusões e Aquisições de 2023 da Bain.
Foundation models, large language models (LLMs), and generative artificial intelligence (AI) captured the attention of providers, biopharmas, payers, and investors over the past year, driven by the promise of making healthcare delivery more efficient, innovative, and effective (see Figure 1). While traditional, analytical AI has been used in healthcare for many years, generative AI is distinguished by its ability to create new content, summarize and translate existing content, and, ultimately, to “reason and plan.”
The technology has potential across many use cases, including these:
Ultimately, generative AI may reshape healthcare institutions’ core functional areas, presenting an opportunity for investors to serve changing markets and adjust operations within existing portfolio companies.
Healthcare investment in generative AI has just begun.
Technology companies are collaborating with major healthcare organizations to apply generative AI tools. For instance, Microsoft and Epic have teamed up to reduce the time clinicians spend documenting or replying to patient messages. Google is working with Bayer to automate drafting of clinical trial communications in multiple languages and is partnering with iCad to integrate AI tools in the company’s devices to detect breast cancer. IBM is working with Microsoft Azure to analyze complex medical records. Ultimately, healthcare information technology vendors are at the forefront of using generative AI, marrying the technology with their extensive networks of providers and users.
Among investors, venture capital and growth equity funds have been deploying capital in companies built around generative AI as a core competency. For example, Hippocratic AI, a healthcare-focused LLM company, raised $50 million in a seed round co-led by General Catalyst and Andreessen Horowitz. Genesis Therapeutics, a drug discovery platform that uses generative AI to pinpoint novel drug candidates, closed a $200 million series B round, with participation from Andreessen Horowitz, Fidelity, and BlackRock.
Mature private equity (PE)-backed companies are also investing in LLMs to drive operational improvement in various areas including better clinician or patient engagement and lower cost structures. For example, Syneos Health, taken private by Elliott, Patient Square, and Veritas, entered into a multiyear deal with Microsoft to leverage OpenAI’s ChatGPT in clinical trials and commercial programs. Similarly, Advent-backed Iodine Software has partnered with OpenAI to infuse LLMs into its AwareCDI product suite to improve the software’s accuracy and efficiency.
To get ahead of this rapidly evolving technology, PE investors must carefully consider the impact of generative AI on their portfolio companies. Primarily, they need to assess the exposure of their portfolio companies’ markets to generative AI disruption, paying attention to both the magnitude and timing of any potential threats or opportunities. Bain has developed a framework to gauge disruption risk, which assesses labor intensity, level of knowledge required to perform tasks, the type and frequency of interactions with humans, and the value of augmented pattern recognition, among other variables.
Businesses where the following are core elements of the value proposition face greater risk: creative content generation, labor-intensive administrative processes and call center work, and text-writing and summarization. For example, business process outsourcers that employ low-skilled labor to generate communication for medical claims and denials may be places where generative AI can automate or accelerate the processes. On the other hand, in healthcare businesses that rely on expert guidance, such as physicians providing clinical recommendations, the technology poses less of a risk for disruption, but instead may be viewed as an opportunity to democratize access and improve quality.
In deploying generative AI at portfolio companies, investors should develop a focused strategy with three key elements:
Similarly, investors should consider the implications of generative AI for new investments’ deal theses, determining the disruption risk of generative AI and the potential for generative AI to unlock value, as part of due diligence and value-creation planning.
Given the complexity and uniqueness of patient situations, much of the work in healthcare requires human labor and judgment. Even areas where less discretion is needed, such as coding, charting, and registry extracts, have seen limited impact from AI models due to relatively small data sets available to train the algorithms. Generative AI promises to address some of these challenges, and experiments will likely proliferate in the year ahead. These efforts and early use cases have the potential to trigger strong labor efficiency gains—addressing the financial pressures on organizations, improving the patient and provider experience, and leading to better clinical outcomes.
We expect progress over the next year to come in select and focused use cases. Over a longer time frame, the breadth and depth of generative AI’s impact on healthcare may well be transformative across workflows, applications, and ways of working. Investors who are thoughtful about generative AI’s impact on their existing portfolio companies and new investments will be able to harness this technological change to generate returns and accelerate the transformation of the healthcare sector.
Este artigo faz parte do Relatório de Fusões e Aquisições de 2023 da Bain.