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Python for Predictive Healthcare Analytics

Python’s versatility in handling large datasets, combined with ML algorithms, enabled the client to transform raw medical data into actionable insights, paving the way for smarter healthcare delivery and better patient care outcomes.

Python for Predictive Healthcare Analytics

About the Client

NDA Signed, a UK-based healthcare provider, aimed to improve patient outcomes by predicting hospital readmissions and managing high-risk cases more effectively. With thousands of patient records generated daily, they needed a data-driven system to analyze medical histories, prescriptions, and test results to highlight potential risks before they escalated.

The Solution

Dotsquares developed a powerful analytics platform leveraging Python’s Machine Learning and Data Science libraries. The solution used Pandas and NumPy for structured data processing, and scikit-learn for training predictive models. By integrating Natural Language Processing (NLP) modules, the system could also analyze doctors’ notes and unstructured patient data.

  • Integration with existing Electronic Health Record (EHR) systems for secure data exchange
  • Predictive modeling for patient readmission risks
  • NLP-based processing of unstructured notes and lab reports
  • Automated alerts for high-risk patients to trigger timely interventions

Results

  • 85% accuracy in predicting patient readmissions within 30 days
  • Improved allocation of medical staff by identifying critical cases early
  • Reduction in avoidable hospital stays, lowering operational costs
  • Enhanced patient satisfaction through proactive treatment strategies

THE DETAILS

Company: NDA Signed

Website: NDA Signed

Location: UK

Industry: Healthcare

Project Focus: Predictive Analytics & Machine Learning

TECHNOLOGY WE USED

Python

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