https://store-images.s-microsoft.com/image/apps.51478.d834ff85-7f63-40f7-affd-67f1ce5ff8bb.5a140b76-f7c6-4e5f-94b5-55386a5a11f6.055a4546-f5a5-4065-ba26-8daf0c8b4b90

Apollo Hospitals CXR TB Detection AI

by Apollo Hospitals Enterprise Ltd

A deep learning-based algorithm for pulmonary tuberculosis detection in chest Radiography

  • A deep learning image prediction model, developed using Indian data combined with datasets from other countries, achieves higher accuracy compared to conventional risk scores.
  • Google Research & Apollo Hospital Collaboration Initiative
  • Feedback Loop from the prospective use in patients
  • Validated using various National & International Data sets
  • QMS: ISO 13485:2016 Certified, MDSAP Certification (In process)

Interpretation & Adoption Message

  • AI Algorithm + Clinicians: The chest X-ray TB Detection model has been built as an adjunct tool for clinicians to detect active pulmonary tuberculosis (TB).
  • Risk Identification and Prevention: The Chest X-ray TB Detection Model helps in early and accurate detection of pulmonary TB, but it should not be used as the only method for diagnosing tuberculosis.
  • Where to use: The TB chest X-ray model has been designed for use in the Radiology Department, specifically chest radiographs to detect tuberculosis at outpatient clinics and health check clinics.

At a glance

https://store-images.s-microsoft.com/image/apps.29557.d834ff85-7f63-40f7-affd-67f1ce5ff8bb.9b12533d-e3b3-4684-94bb-93fbd1d755fb.193e0c66-98b7-47bd-b8c5-c11c8a6c8428
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https://store-images.s-microsoft.com/image/apps.10944.d834ff85-7f63-40f7-affd-67f1ce5ff8bb.9b12533d-e3b3-4684-94bb-93fbd1d755fb.76491392-0940-481b-9504-7ec6f3f888a7
https://store-images.s-microsoft.com/image/apps.51431.d834ff85-7f63-40f7-affd-67f1ce5ff8bb.9b12533d-e3b3-4684-94bb-93fbd1d755fb.60401713-9a0d-4b36-b06c-c80d14afbf5a
https://store-images.s-microsoft.com/image/apps.43325.d834ff85-7f63-40f7-affd-67f1ce5ff8bb.9b12533d-e3b3-4684-94bb-93fbd1d755fb.9b31f669-dd7a-4787-a152-122d2b638df9