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Aidoc

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Aidoc
IndustryMedical technology
Founded2016
FoundersElad Walach
Michael Braginsky
Guy Reiner
HeadquartersTel Aviv, Israel
Websitewww.aidoc.com

Aidoc Medical is an Israeli technology company that develops computer-aided simple triage and notification systems. Aidoc has obtained FDA and CE mark approval for its stroke, pulmonary embolism, cervical fracture, intracranial hemorrhage, intra-abdominal free gas, and incidental pulmonary embolism algorithms.

Aidoc algorithms are in use in more than 900 hospitals and imaging centers, including Montefiore Nyack Hospital, LifeBridge Health, LucidHealth, Yale New Haven Hospital, Cedars-Sinai Medical Center, University of Rochester Medical Center, and Sheba Medical Center.

History

Aidoc was founded in 2016 by Elad Walach as the CEO, Michael Braginsky as the CTO and Guy Reiner as the VP. In April 2017, the company raised $7M, led by TLV Partners, and in April 2019, the company raised another $27M, led by Square Peg capital.

In August 2018, Aidoc gained FDA clearance for its intracranial hemorrhage system, and in May 2019 it received clearance for the pulmonary embolism system.

In January 2020, the system for detecting large-vessel occlusions (LVOs) in head CTA examinations obtained FDA clearance.

Products and market

Aidoc has developed a suite of artificial intelligence products that flag both time-sensitive and time-consuming (for the radiologist) abnormalities across the body. The algorithms are developed with large quantities of data to provide diagnostic aid for a broad set of pathologies. The company offers an array of algorithms that span across the body, including for intracranial hemorrhage, spine fractures (C, T & L), free air in the abdomen, pulmonary embolism, and more. It developed "Always-on AI", a term coined by Elad Walach that refers to a type of artificial intelligence that is "Always-on—constantly running in the background and automatically analyzing medical imaging data, identifying urgent findings, and sparing radiologists from "drowning" in vast amounts of irrelevant data.

Aidoc's solutions cover medical conditions prevalent in all settings (ED/inpatient/outpatient), including level 1 trauma centers, outpatient imaging centers, teleradiology groups and, are set up in over 200 medical centers worldwide. Notable customers include the University of Rochester Medical Center and Global Diagnostics Australia.

Clinical Research

A clinical study on Aidoc’ accuracy of deep convolutional neural networks for the detection of pulmonary embolism (PE) on CT pulmonary angiograms (CTPAs) was performed by the University Hospital of Basel and presented at the European Congress of Radiology, showing that the Aidoc algorithm reached 93% sensitivity and 95% specificity. Clinical research has also been performed to test the diagnostic performance of Aidoc's deep learning-based triage system for the flagging of acute findings in abdominal computed tomography (CT) examinations. Overall, the algorithm achieved 93% sensitivity (91/98, 7 false negatives) and 97% specificity (93/96, 3 false-positive) in the detection of acute abdominal findings.

Additional clinical research on Aidoc's Intracranial hemorrhage algorithm accuracy was presented at the European Congress of Radiology by Antwerp University Hospital, evaluating the use of its deep learning algorithm for the detection of intracranial hemorrhage on non-contrast enhanced CT of the brain. The University of Washington completed a study on the accuracy of Aidoc's intracranial hemorrhage algorithm.

References

  1. "AIDoc Medical Ltd". Bloomberg.
  2. "Aidoc sets up camp at FDA with 6th approval for AI-powered diagnostics". Geektime. 2020-10-21. Retrieved 2024-01-26.
  3. "Aidoc Always On Healthcare AI". Healthcare AI | Aidoc Always-on AI. Retrieved 2024-01-26.
  4. Magazine, I. C. E. (2020-07-31). "Aidoc Artificial Intelligence Solutions". ICE. Retrieved 2024-01-26.
  5. "Global Diagnostics Australia Incorporates Artificial Intelligence Into Its Radiology Applications". Yahoo Finance. August 8, 2019. Retrieved November 22, 2019.
  6. O'Hear, Steve (2017-04-26). "AIDoc Medical raises $7M to bring AI to medical imaging analysis". TechCrunch. Retrieved 2024-01-26.
  7. "Aidoc, the AI solution for medical imaging analysis, raises $27M Series B – TechCrunch". TechCrunch. 17 April 2019.
  8. "August 2018 510(k) Clearances". U.S. Food and Drug Administration. 7 September 2018.
  9. "The meaning of regulatory approval for AI". AI Med. 15 May 2019.
  10. "FDA OKs World's First AI Solution for Flagging Pulmonary Embolism". Medical Product Outsourcing. 16 May 2019.
  11. "Aidoc's AI solution for LVOs gains FDA clearance". AI in Healthcare. January 13, 2020. Retrieved January 22, 2020.
  12. "Medical Imaging Startup Aidoc Gets FDA Clearance For AI Solution To Spot Stroke". NoCamels Innovation News. 13 January 2020. Retrieved 11 March 2020.
  13. Palmer, Whitney J. (13 January 2020). "AI Start-Up Receives FDA Clearance for Comprehensive CT Stroke Package". MJH Life Sciences. Retrieved 10 April 2020.
  14. Blum, Brian; Leichman, Abigail Klein (11 December 2018). "AI tool helps radiologists clear dangerous data bottleneck". Israel21c.
  15. "Aidoc releases complete AI package for treatment of stroke". NeuroNews International. 23 September 2019.
  16. "Nuance's AI Marketplace Delivers AI at Scale with Industry's First Workflow-Integrated Market for Diagnostic Imaging Algorithms". Nuance Communications. 26 November 2018.
  17. "Global Diagnostics Australia incorporates artificial intelligence into its radiology applications". Global Diagnostics Australia. 8 August 2019.
  18. "Automated detection of pulmonary embolism in CT pulmonary angiograms using an AI-powered algorithm".
  19. "AI-powered detection of pulmonary embolism in CT pulmonary angiograms: a validation study of the diagnostic performance of prototype algorithms". Aidoc.
  20. "Detection of intracranial haemorrhage on CT of the brain using a deep learning algorithm". Aidoc.
  21. Winkel, DJ; Heye, T; Weikert, TJ; Boll, DT; Stieltjes, B. (20 November 2019). "Evaluation of an AI-Based Detection Software for Acute Findings in Abdominal Computed Tomography Scans: Toward an Automated Work List Prioritization of Routine CT Examinations". Investigative Radiology. 54 (1): 55–59. doi:10.1097/RLI.0000000000000509. PMID 30199417. S2CID 52186362.
  22. Winkel, D. J.; Heye, T.; Weikert, T. J.; Boll, D. T.; Stieltjes, B. (20 November 2019). "Evaluation of an AI-Based Detection Software for Acute... : Investigative Radiology". Investigative Radiology. 54 (1): 55–59. doi:10.1097/RLI.0000000000000509. PMID 30199417. S2CID 52186362.
  23. "Preliminary Results of Aidoc's Deep Learning Algorithm Detection Accuracy for Pathological Intracranial Hyperdense Lesions". Aidoc.
  24. P. Ojeda; M. Zawaideh; M. Mossa-Basha; D. Haynor (2019). "The utility of deep learning: evaluation of a convolutional neural network for detection of intracranial bleeds on non-contrast head computed tomography studies". In Angelini, Elsa D.; Landman, Bennett A. (eds.). Medical Imaging 2019: Image Processing. p. 128. doi:10.1117/12.2513167. ISBN 9781510625457. S2CID 88494572.

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