Detection of Falsely Elevated Point-of-Care Potassium Results Due to Hemolysis Using Predictive Analytics

被引:11
作者
Benirschke, Robert C. [1 ,2 ]
Gniadek, Thomas J. [1 ]
机构
[1] NorthShore Univ Hlth Syst, Dept Pathol, Evanston, IL 60201 USA
[2] Univ Chicago, Pritzker Sch Med, Dept Pathol, Chicago, IL 60637 USA
关键词
Pseudohyperkalemia; Potassium; Machine learning; Logistic regression; Computational pathology; Clinical decision support; ERRORS;
D O I
10.1093/ajcp/aqaa039
中图分类号
R36 [病理学];
学科分类号
100104 ;
摘要
Objectives: Preanalytical factors, such as hemolysis, affect many components of a test panel. Machine learning can be used to recognize these patterns, alerting clinicians and laboratories to potentially erroneous results. In particular, machine learning might identify which cases of elevated potassium from a point-of-care (POC) basic metabolic panel are likely erroneous. Methods: Plasma potassium concentrations were compared between POC and core laboratory basic metabolic panels to identify falsely elevated POC results. A logistic regression model was created using these labels and the other analytes on the POC panel. Results: This model has high predictive power in classifying POC potassium as falsely elevated or not (area under the curve of 0.995 when applied to the test data set). A rule-in and rule-out approach further improves the model's applicability with a positive predictive value of around 90% and a negative predictive value near 100%. Conclusions: Machine learning has the potential to detect laboratory errors based on the recognition of patterns in commonly requested multianalyte panels. This could be used to alert providers at the POC that a result is suspicious or used to monitor the quality of POC results.
引用
收藏
页码:242 / 247
页数:6
相关论文
共 10 条
[1]   Detection of Preanalytic Laboratory Testing Errors Using a Statistically Guided Protocol [J].
Baron, Jason M. ;
Mermel, Craig H. ;
Lewandrowski, Kent B. ;
Dighe, Anand S. .
AMERICAN JOURNAL OF CLINICAL PATHOLOGY, 2012, 138 (03) :406-413
[2]   Cystatin C as a biomarker for estimating glomerular filtration rate [J].
Ferguson, Thomas W. ;
Komenda, Paul ;
Tangri, Navdeep .
CURRENT OPINION IN NEPHROLOGY AND HYPERTENSION, 2015, 24 (03) :295-300
[3]   Epidemiology of hyperkalemia: an update [J].
Kovesdy, Csaba P. .
KIDNEY INTERNATIONAL SUPPLEMENTS, 2016, 6 (01) :3-6
[4]   A New Equation to Estimate Glomerular Filtration Rate [J].
Levey, Andrew S. ;
Stevens, Lesley A. ;
Schmid, Christopher H. ;
Zhang, Yaping ;
Castro, Alejandro F., III ;
Feldman, Harold I. ;
Kusek, John W. ;
Eggers, Paul ;
Van Lente, Frederick ;
Greene, Tom ;
Coresh, Josef .
ANNALS OF INTERNAL MEDICINE, 2009, 150 (09) :604-612
[5]  
Luo Y, 2016, AM J CLIN PATHOL, V145, P778, DOI [10.1093/AJCP/AQW064, 10.1093/ajcp/aqw064]
[6]   Pseudohyperkalemia: A new twist on an old phenomenon [J].
Meng, Qing H. ;
Wagar, Elizabeth A. .
CRITICAL REVIEWS IN CLINICAL LABORATORY SCIENCES, 2015, 52 (02) :45-55
[7]   The detection and prevention of errors in laboratory medicine [J].
Plebani, Mario .
ANNALS OF CLINICAL BIOCHEMISTRY, 2010, 47 :101-110
[8]  
R Core Team, 2022, R: A language and environment for statistical computing
[9]  
Rosenbaum MW, 2018, AM J CLIN PATHOL, V150, P555, DOI [10.1093/AJCP/AQY085, 10.1093/ajcp/aqy085]
[10]   Variable Potassium Concentrations: Which Is Right and Which Is Wrong? [J].
Theparee, Talent ;
Benirschke, Robert C. ;
Lee, Hong-Kee .
LABORATORY MEDICINE, 2017, 48 (02) :183-187