4 common use cases for an AI-powered drug pipeline analysis platform

4 common use cases for an AI-powered drug pipeline analysis platform

In the competitive and expensive field of biopharma, decisions about drug development, portfolio prioritization, opportunity assessment, and opportunity identification require precise insights to minimize risks and maximize the odds of success. An AI-powered drug pipeline analysis platform can address these needs by leveraging AI tools and pharma expertise to help companies make informed decisions efficiently. Let’s explore the four most common use cases for an AI-powered drug pipeline analysis platform and how they support strategic decision-making in biopharma.

1. Opportunity assessment & business development

Opportunity assessment is critical when deciding to in-license a drug, invest in a development program, or partner with another company. This is one of the most popular use cases we see for an AI-powered drug pipeline analysis platform. It involves identifying promising assets and evaluating their potential in a more structured way, supporting business development decisions, such as: 

  • BD in-licensing: When investors and organizations are considering in-licensing a drug, they need to weigh the potential risks and returns. For example, companies may be eyeing a drug in development and want to know whether it’s worth their investment based on market fit, existing competition, and therapeutic viability.
  • Informed decision-making: The cost of a poor investment decision in licensing a drug is steep, making an unbiased analysis of a lot of data essential. AI platforms can assess risk by analyzing drug data, clinical trial results, and competitive landscapes using structured and unstructured data together to provide a clearer picture.

Questions addressed:

  • “Should I in-license this specific drug(s)?”
  • “Is this the right indication for my investment?”
  • “What are the risks involved with this drug or company?”

An AI-powered drug pipeline analysis platform can narrow down a list of drugs to those with the highest potential ROI, helping heads of business development, strategy leads, and investors in making well-informed opportunity assessments and decisions about BD in-licensing.

2. Portfolio Prioritization

For biopharma organizations that already have a drug portfolio and are managing multiple drugs or programs, prioritizing these assets is essential. An AI-powered pipeline analysis platform allows for a more agile approach to portfolio management, giving companies the flexibility to adjust focus based on updated market data, risks, resource constraints, and more to stack rank decisions across the entire drug portfolio. A pipeline analysis platform can help with: 

  • Complex portfolios: Organizations with a large portfolio of diverse assets benefit significantly from periodic evaluations. For companies with multiple programs across different therapeutic areas, it’s critical to regularly assess risks, compare developmental stages, and forecast potential payoffs. This helps with program prioritization, helping teams decide which programs to continue funding, and identify those that may need to be paused or discontinued.
  • Disease areas: A single drug is sometimes pointed at solving different diseases, and someone needs to own the arc for that drug program, to determine when to apply more resources or cut off a program. The ability to quickly and comprehensively analyze drug performance in different disease areas is vital for teams that need to make informed decisions quickly about where to focus efforts. 

Questions Addressed:

  • “What are my most promising programs that warrant further investment?”
  • “Which programs should I deprioritize or kill?”
  • “What are the biggest risks to each of my programs?”

A biopharma organization can use an AI-powered pipeline analysis platform to stack-rank its portfolio quarterly, allowing leadership to reallocate resources to the most promising or highest-priority assets based on comprehensive, data-driven insights that are up-to-date and unbiased.

3. Opportunity identification

Organizations with platform technologies often need to build a list of opportunities and a list of questions they might ask as part of that process. Unlike companies focusing on a single drug, platform technology companies have broad application potential and require a customized framework to build a big list of potential opportunities and then do a deeper analysis of the most promising ones. There are a couple of areas where an AI-powered pipeline analysis platform improves outcomes, including:

  • Early-stage strategic development: For companies in the early stages of identifying opportunities, with no set list of targets or indications, an AI platform can help identify and prioritize a universe of opportunities. It can help an organization define the area they want to focus on and explore opportunities within that universe. 
  • Identification and prioritization: Platform technology companies benefit from a pipeline analysis platform’s ability to create, assess, and refine a list of potential indications or targets based on specific criteria and dive deep to select the most promising areas.

Questions addressed:

  • “Where should I point my technology for maximum impact?”
  • “What are the most viable therapeutic areas or drug candidates?”
  • “Which candidates should I continue to focus my R&D efforts on?”

A pipeline analysis platform enables R&D leaders or heads of strategy to create a focused strategy, identifying and selecting the highest-potential opportunities from a wide range of possibilities based on their organization’s defined areas of interest and insights into each area’s challenges, needs, and current competitive landscape.

4. Competitive landscape analysis

This last one, competitive landscape analysis, is fundamental to every analysis, and often goes together with the previous three use cases. Competitive analysis is foundational for understanding how a drug or therapeutic area fits in the broader market. It provides insights into approved drugs, drugs in development, and potential competitors, helping organizations map out how they fit in the market. Analyzing the competitive landscape is essential for making data-driven decisions about which drug or area to focus on. For example:  

  • Exploring a therapeutic area: For companies focused on a specific therapeutic area (for example, oncology or neurology), a pipeline analysis platform can compile a “stacked” landscape, detailing competitors across multiple indications within that area. This in-depth view helps drug discovery companies understand what’s already approved, what’s on the horizon, and what gaps exist in that therapeutic area.
  • Making decisions at scale: While it’s relatively simple to track a few competitors, managing dozens—or even hundreds of competitive drugs—becomes a lot more complex. An AI-powered pipeline analysis platform simplifies this by collecting structured and unstructured data, normalizing it, and making it all queryable. It also enables data visualization, making the competitive landscape more accessible, particularly in large, crowded therapeutic areas.

Questions addressed:

  • “I have a preclinical drug. Which of these indications should I enter first?”
  • “How does my drug compare to drugs already in the market?”
  • “How does my drug compare to the ones that will be available by the time I’m ready to release my offering?” 
  • “I have a promising drug in development with a clear first indication. Should I enter into this indication next?”

As a more concrete example, a customer provides the disease area, and, using industry data, VibeOne can tell the customer what drugs have already been approved in that area. It can also tell them what is likely to be approved in the near future. Normally, organizations outsource this competitive analysis to consultancies, but VibeOne can do it quickly and accurately, without introducing human biases. With AI-driven competitive analysis, an organization can pinpoint underserved indications, understand competitor timelines, and position itself strategically against upcoming market entrants.

Make better decisions, faster

An AI-powered drug pipeline analysis platform offers robust support for biopharma organizations, accelerating informed decision-making in competitive landscape analysis, opportunity assessment and business development, portfolio prioritization, and opportunity identification. By leveraging an AI analyst built into a pipeline analysis platform, organizations increase the scope of materials used to research new opportunities, reduce risks, decrease inherent human biases, and prioritize investments effectively—ultimately advancing the drug development process and reducing costs in a competitive industry.

Interested in seeing AI analysis in action? Reach out today to discuss your project and schedule a demo of VibeOne!

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