New Epochs in AI Supervision: Design and Implementation of an Autonomous Radiology AI Monitoring System (2311.14305v1)
Abstract: With the increasingly widespread adoption of AI in healthcare, maintaining the accuracy and reliability of AI models in clinical practice has become crucial. In this context, we introduce novel methods for monitoring the performance of radiology AI classification models in practice, addressing the challenges of obtaining real-time ground truth for performance monitoring. We propose two metrics - predictive divergence and temporal stability - to be used for preemptive alerts of AI performance changes. Predictive divergence, measured using Kullback-Leibler and Jensen-Shannon divergences, evaluates model accuracy by comparing predictions with those of two supplementary models. Temporal stability is assessed through a comparison of current predictions against historical moving averages, identifying potential model decay or data drift. This approach was retrospectively validated using chest X-ray data from a single-center imaging clinic, demonstrating its effectiveness in maintaining AI model reliability. By providing continuous, real-time insights into model performance, our system ensures the safe and effective use of AI in clinical decision-making, paving the way for more robust AI integration in healthcare
- The rise of artificial intelligence in healthcare applications. In Artificial Intelligence in Healthcare, pages 25–60. Elsevier, 2020.
- Revolutionizing healthcare: the role of artificial intelligence in clinical practice. BMC Medical Education, 23(1), September 2023.
- Requirements and reliability of AI in the medical context. Physica Medica, 83:72–78, March 2021.
- Clinical artificial intelligence quality improvement: towards continual monitoring and updating of AI algorithms in healthcare. npj Digital Medicine, 5(1), May 2022.
- Reliable and resilient AI and IoT-based personalised healthcare services: A survey. IEEE Access, 10:535–563, 2022.
- RB Altman. Artificial intelligence (AI) systems for interpreting complex medical datasets. Clinical Pharmacology & Therapeutics, 101(5):585–586, March 2017.
- Artificial intelligence in cancer imaging: Clinical challenges and applications. CA: A Cancer Journal for Clinicians, 69(2):127–157, February 2019.
- The augmented radiologist: artificial intelligence in the practice of radiology. Pediatric Radiology, 52(11):2074–2086, October 2021.
- How artificial intelligence and machine learning can help healthcare systems respond to COVID-19. Machine Learning, 110(1):1–14, December 2020.
- Machine learning to assist clinical decision-making during the COVID-19 pandemic. Bioelectronic Medicine, 6(1), July 2020.
- CheXstray: A Real-Time Multi-Modal Monitoring Workflow for Medical Imaging AI, page 326–336. Springer Nature Switzerland, 2023.
- Failing loudly: An empirical study of methods for detecting dataset shift, 2018.
- Performance investigation for medical image evaluation and diagnosis using machine-learning and deep-learning techniques. Computation, 11(3):63, March 2023.
- Preparing medical imaging data for machine learning. Radiology, 295(1):4–15, April 2020.
- The impact of pre- and post-image processing techniques on deep learning frameworks: A comprehensive review for digital pathology image analysis. Computers in Biology and Medicine, 128:104129, January 2021.
- Effects of data time lag in a decision-making system using machine learning for pork price prediction. Neural Computing and Applications, 35(26):19221–19233, June 2023.
- Quality control in clinical biochemistry laboratory-a glance. JOURNAL OF CLINICAL AND DIAGNOSTIC RESEARCH, 2023.
- Kullback–leibler divergence metric learning. IEEE Transactions on Cybernetics, 52(4):2047–2058, April 2022.
- The jensen-shannon divergence. Journal of the Franklin Institute, 334(2):307–318, March 1997.
- Seng Hansun. A new approach of moving average method in time series analysis. In 2013 Conference on New Media Studies (CoNMedia), pages 1–4, 2013.
- Guoping Zeng. Metric divergence measures and information value in credit scoring. Journal of Mathematics, 2013:1–10, 2013.
- Chapter 10 : Methods for comparative studies. In Francis Lau and Craig Kuziemsky, editors, Handbook of eHealth Evaluation: An Evidence-based Approach. University of Victoria, Victoria (BC), Feb 27 2017. https://www.ncbi.nlm.nih.gov/books/NBK481584/.
- Evaluating the cost-effectiveness of a monitoring system for improved evacuation from passenger ships. Safety Science, 48(6):788–802, July 2010.
- Vasantha Kumar Venugopal (4 papers)
- Abhishek Gupta (226 papers)
- Rohit Takhar (3 papers)
- Vidur Mahajan (3 papers)