Case Study 1

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Improved Cancer Prognosis Accuracy and Treatment Recommendation with AI Platform

Client

An advanced healthcare analytics company, Offering personalized and predictive AI platforms

Services

Product Development, Data Platform

Industry

Healthcare

Tech

Laravel 6, Vue.js 2, MySQL, Selenium, Docker, AWS

Millions diagnosed with cancer yearly need personalized treatment, but accessing patient-specific data is challenging for physicians. Clinical trials lack crucial information, causing survival rate disparities. Our client set out to develop an AI-driven system, enriched with a decade's worth of patient-reported outcomes, to personalize cancer treatments.
Teaming up with Xpatech, we aimed to revolutionize cancer care.

Our objective was to deliver a comprehensive AI-powered clinical decision support system from start to finish. Our holistic approach encompassed everything, including an ML-based predictive engine, back-end and front-end development, UI/UX design, architecture optimization, database support, QA, DevOps integration, and the crucial process of data migration.

Within a development time of six months, our team engineered a scalable AI clinical decision support platform integrated with proprietary data, empowering cancer patients and healthcare providers with informed treatment choices. The platform provides insights into treatment effects tailored to individual patient profiles, considering factors like age, gender, health status, and diagnosis. Comprising three interconnected components:

1. MyInsights:
A predictive tool showcasing visual survival curves and treatment effect comparisons based on patient-specific factors.
2. MyCommunity:
A supportive social network allowing patients to share experiences within personalized communities.
3. MyJournal:
A space for patients to document their cancer journey, facilitating comparisons with others' experiences.

The treatment recommendation platform presents an intuitive web questionnaire and versatile report-generation tools, enabling easy specification of conditions and downloadable reports as PDFs. From a technical viewpoint, our approach included:

  • Infrastructure setup and enhancement:
  • Leveraging AWS for a robust foundation and optimizing the client's MySQL database structure.
  • Algorithm integration:
  • Developing a bespoke algorithm for report generation and implementing best DevOps practices for efficient project management.
  • Framework transition:
  • Migrating to the Laravel framework and constructing a solid API for seamless component integration.

Accessing real-world patient-reported outcomes revolutionizes cancer treatment strategies by providing personalized insights beyond limited trial-based data. This case study explores how a clinical decision support system empowers physicians and patients alike.

Physician Benefits:
  • Personalized Treatment Plans: With access to real-world patient-reported outcomes, physicians can tailor cancer treatment plans to individual patient needs, improving effectiveness and patient outcomes.
Patient Benefits:
  • Informed Decision-Making: Patients receive comprehensive information on survival rates, quality of life, functioning, and costs throughout the care cycle, empowering them to make informed decisions about their treatment journey.
Technological Advancements:
  • Machine Learning Integration: By employing machine learning algorithms, the clinical decision support platform reduces the rate of misdiagnosis by deciphering complex patterns that may go unnoticed by physicians, enhancing diagnostic accuracy and patient care quality.
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