A machine learning framework to adjust for learning effects in medical device safety evaluation

被引:0
作者
Koola, Jejo D. [1 ]
Ramesh, Karthik [2 ]
Mao, Jialin [3 ]
Ahn, Minyoung [4 ]
Davis, Sharon E. [5 ]
Govindarajulu, Usha [6 ]
Perkins, Amy M. [8 ]
Westerman, Dax
Ssemaganda, Henry [9 ]
Speroff, Theodore [7 ,10 ]
Ohno-Machado, Lucila [11 ]
Ramsay, Craig R. [12 ]
Sedrakyan, Art [3 ]
Resnic, Frederic S. [9 ,13 ]
Matheny, Michael E. [5 ,7 ,8 ,10 ]
机构
[1] Univ Calif San Diego, Dept Med, 9500 Gilman Dr, MC 0881, La Jolla, CA 92093 USA
[2] Univ Calif San Diego, Sch Med, San Diego, CA 92093 USA
[3] Weill Cornell Med, Dept Populat Hlth Sci, New York, NY 10065 USA
[4] Univ Calif San Diego, Jacobs Sch Engn, San Diego, CA 92093 USA
[5] Vanderbilt Univ, Med Ctr, Dept Biomed Informat, Nashville, TN 37203 USA
[6] Icahn Sch Med Mt Sinai, Ctr Biostat, Dept Populat Hlth Sci & Policy, New York, NY 10029 USA
[7] Vanderbilt Univ, Med Ctr, Dept Biostat, Nashville, TN 37232 USA
[8] Tennessee Valley Healthcare Syst VA, Geriatr Res Educ & Clin Care Ctr, Nashville, TN 37212 USA
[9] Lahey Hosp & Med Ctr, Comparat Effectiveness Res Inst, Burlington, MA 01803 USA
[10] Vanderbilt Univ, Med Ctr, Dept Med, Nashville, TN 37232 USA
[11] Yale Sch Med, Dept Biomed Informat & Data Sci, New Haven, CT 06510 USA
[12] Univ Aberdeen, Hlth Serv Res Unit, Aberdeen AB25 2ZD, Scotland
[13] Lahey Hosp & Med Ctr, Div Cardiovasc Med, Burlington, MA 01805 USA
关键词
post-market safety surveillance; medical devices; learning effects; learning curve; machine learning; AORTIC-VALVE-REPLACEMENT; POTENTIAL OUTCOMES; CAUSAL INFERENCE; CURVE; REPRODUCIBILITY; SURVEILLANCE; REGISTRY;
D O I
10.1093/jamia/ocae273
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objectives: Traditional methods for medical device post-market surveillance often fail to accurately account for operator learning effects, leading to biased assessments of device safety. These methods struggle with non-linearity, complex learning curves, and time-varying covariates, such as physician experience. To address these limitations, we sought to develop a machine learning (ML) framework to detect and adjust for operator learning effects. Materials and Methods: A gradient-boosted decision tree ML method was used to analyze synthetic datasets that replicate the complexity of clinical scenarios involving high-risk medical devices. We designed this process to detect learning effects using a risk-adjusted cumulative sum method, quantify the excess adverse event rate attributable to operator inexperience, and adjust for these alongside patient factors in evaluating device safety signals. To maintain integrity, we employed blinding between data generation and analysis teams. Synthetic data used underlying distributions and patient feature correlations based on clinical data from the Department of Veterans Affairs between 2005 and 2012. We generated 2494 synthetic datasets with widely varying characteristics including number of patient features, operators and institutions, and the operator learning form. Each dataset contained a hypothetical study device, Device B, and a reference device, Device A. We evaluated accuracy in identifying learning effects and identifying and estimating the strength of the device safety signal. Our approach also evaluated different clinically relevant thresholds for safety signal detection. Results:Our framework accurately identified the presence or absence of learning effects in 93.6% of datasets and correctly determined device safety signals in 93.4% of cases. The estimated device odds ratios' 95% confidence intervals were accurately aligned with the specified ratios in 94.7% of datasets. In contrast, a comparative model excluding operator learning effects significantly underperformed in detecting device signals and in accuracy. Notably, our framework achieved 100% specificity for clinically relevant safety signal thresholds, although sensitivity varied with the threshold applied. Discussion: A machine learning framework, tailored for the complexities of post-market device evaluation, may provide superior performance compared to standard parametric techniques when operator learning is present. Conclusion: Demonstrating the capacity of ML to overcome complex evaluative challenges, our framework addresses the limitations of traditional statistical methods in current post-market surveillance processes. By offering a reliable means to detect and adjust for learning effects, it may significantly improve medical device safety evaluation.
引用
收藏
页码:206 / 217
页数:13
相关论文
共 46 条
  • [1] Aho K.A., 2013, Foundational and applied statistics for biologists using R
  • [2] Learning Curves for Transfemoral Transcatheter Aortic Valve Replacement in the PARTNER-I Trial: Technical Performance
    Alli, Oluseun
    Rihal, Charanjit S.
    Suri, Rakesh M.
    Greason, Kevin L.
    Waksman, Ron
    Minha, Sa'ar
    Torguson, Rebecca
    Pichard, Augusto D.
    Mack, Michael
    Svensson, Lars G.
    Rajeswaran, Jeevanantham
    Lowry, Ashley M.
    Ehrlinger, John
    Tuzcu, E. Murat
    Thourani, Vinod H.
    Makkar, Raj
    Blackstone, Eugene H.
    Leon, Martin B.
    Holmes, David
    [J]. CATHETERIZATION AND CARDIOVASCULAR INTERVENTIONS, 2016, 87 (01) : 154 - 162
  • [3] [Anonymous], 2016, Factors to Consider Regarding Benefit-Risk in Medical Device Product Availability, Compliance, and Enforcement Decisions Guidance for Industry and Food and Drug Administration Staff Preface Public Comment
  • [4] Learning curves for cardiothoracic and vascular surgical procedures - a systematic review
    Arora, Karan Singh
    Khan, Nuzhath
    Abboudi, Hamid
    Khan, Mohammed S.
    Dasgupta, Prokar
    Ahmed, Kamran
    [J]. POSTGRADUATE MEDICINE, 2015, 127 (02) : 202 - 214
  • [5] Learning Curve for Intracranial Angioplasty and Stenting in Single Center
    Cai, Qiankun
    Li, Yongkun
    Xu, Gelin
    Sun, Wen
    Xiong, Yunyun
    Sun, Wenshan
    Bao, Yuanfei
    Huang, Xianjun
    Zhang, Yao
    Zhou, Lulu
    Zhu, Wusheng
    Liu, Xinfeng
    [J]. CATHETERIZATION AND CARDIOVASCULAR INTERVENTIONS, 2014, 83 (01) : E94 - E100
  • [6] Procedural Experience for Transcatheter Aortic Valve Replacement and Relation to Outcomes The STS/ACC TVT Registry
    Carroll, John D.
    Vemulapalli, Sreekanth
    Dai, Dadi
    Matsouaka, Roland
    Blackstone, Eugene
    Edwards, Fred
    Masoudi, Frederick A.
    Mack, Michael
    Peterson, Eric D.
    Holmes, David
    Rumsfeld, John S.
    Tuzcu, E. Murat
    Grover, Frederick
    [J]. JOURNAL OF THE AMERICAN COLLEGE OF CARDIOLOGY, 2017, 70 (01) : 29 - 41
  • [7] Center for Devices and Radiological Health, 2020, RECALLS CORRECTIONS
  • [8] Learning curve analysis of mitral valve repair using telemanipulative technology
    Charland, Patrick J.
    Robbins, Tom
    Rodriguez, Evilio
    Nifong, Wiley L.
    Chitwood, Randolph W., Jr.
    [J]. JOURNAL OF THORACIC AND CARDIOVASCULAR SURGERY, 2011, 142 (02) : 404 - 410
  • [9] XGBoost: A Scalable Tree Boosting System
    Chen, Tianqi
    Guestrin, Carlos
    [J]. KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, : 785 - 794
  • [10] Cook Jonathan A, 2004, Clin Trials, V1, P421, DOI 10.1191/1740774504cn042oa