1. Analyze market opportunities for better product portfolio and revenue optimization
2. Predict product lifecycles in more detail to manage every stage optimally
1. Use analytics to increase the speed and success rate of clinical trials
2. Conduct connected trials, merging data for faster insight & lower cost
3. Improve supply chain management, boosting efficiency & reducing costs
1. Spot signs of adverse effects sooner and take action to minimize effects
2. Capture and analyze customer voice to address negative sentiment early
3. Monitor product quality and fix issues before widespread impact
A European pharmaceutical manufacturer conducted detailed clustering of pharmacy segments and boosted sales with targeted promotion of drug classes.
An R&D team used text analytics on research papers from 8,000+ scientists, created granular subject matter tags, and extracted insights that increased its speed to revenue with new drugs
A clinical research organization developed a proprietary algorithm for patient recruitment, site selection and monitoring, making clinical trials more effective.
A drug manufacturer augmented its master data management approach to mapping active ingredients to 35,000 SKUs, improving data quality which made manufacturing, foreign markets packaging and regional inventory stocking more precise and accurate.
A research organization used text analytics to mine patient responses for cluster and topic analysis to ensure key observations from the protocol were properly factored into the clinical study, vastly improving contextual insights from the trial.
A manufacturer predicted outliers in chemical composition that arose during batch manufacturing processes, which allowed it to find issues sooner, intervene before product shipped and avoid penalties for inadequate quality control.
Let's talk about the ways data science can be used to improve lives, while also helping your organization drive revenue, cut costs, and avoid risks.