Measurement Uncertainty in Clinical Validation Studies of Sensors
Abstract
:1. Introduction
2. Standards of Measurement
2.1. Uncertainty and Measurement Models
2.1.1. Proposed Uncertainty Model for Sensor Measurement Validation Studies
- Sensor uncertainty represents performance of a sensor or device. This is the key metric of interest in a clinical measurement validation study. Sensor characteristics such as stability, signal quality, and data averaging can significantly influence sensor uncertainty.
- Participant uncertainty relates to the normal and natural variability in an individual study participant’s physiological function. With physiological measurements, it is common for the true value to change during the measurement period, even in the same study participant. This uncertainty will depend on the sampling frequency, averaging interval, filtering, and measurement interval. Aliasing may also be present if the sample frequency is too low. Participant uncertainty can be qualified by changing the sampling frequency, averaging interval, filtering, and measurement interval for the same participant and observation.
- Observer uncertainty relates to the ability of an observer to achieve identical measurements under identical conditions on the same participant. Typically defined as repeatability, there is an interval between measurements, but it is assumed that conditions do not change within this short interval. Observer uncertainty can be quantified and reduced by training and experience, and when the same observer performs repeat observations within a short time interval.
- Context and setting uncertainty includes clinical factors, such as age, sex, ethnicity, disease severity, and sensor location, and environmental factors, such as temperature, light, sound, vibration, and movement (e.g., talking and wind), which can create additional uncertainty. Context uncertainty can be estimated by changing a single factor and evaluating the impact on the observations while minimizing all other uncertainty factors.
- Data capture uncertainty relates to the method used to capture measurements which can significantly increase uncertainty. Number preference is frequently observed when a user records a value from a sensor [10]. Synchronization of the investigational and reference sensors or devices is critically important to reduce uncertainty due to study participant uncertainty [11]. This is particularly critical in measurements with significant time variation. As perfect synchronization is not feasible, data capture uncertainty can be evaluated with the introduction of random fixed time delays. Data capture via automated digital recording is preferred for measurement validation studies to avoid number preference and ensure robust and consistent synchronization.
- Analysis uncertainty includes down sampling, averaging, and rounding. The use of fixed times of observations, such as breaths or beats per minute, are commonly not recognized as rounding down. Consistent methods of down sampling and averaging should be used to compare investigational and reference devices using as high a level of precision as possible to minimize analysis uncertainty. Using precise inter-breath or beat interval is preferable to counting the number of breaths or beats within an interval. Analysis uncertainty also can be evaluated using different methods on the same participant and observation.
- Other uncertainty relates to the reality that there may be other unexplained and unmeasurable sources of uncertainty, and all efforts should be made to identify and quantify these if possible.
2.1.2. Uncertainty in Clinical Decision-Making
2.2. Improving Sensors and Devices to Reduce Uncertainty
2.3. Improving Clinical Decision-Making
Author Contributions
Funding
Institutional Review Board statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Sjoding, M.W.; Dickson, R.P.; Iwashyna, T.J.; Gay, S.E.; Valley, T.S. Racial Bias in Pulse Oximetry Measurement. N. Engl. J. Med. 2020, 383, 2477–2478. [Google Scholar] [CrossRef] [PubMed]
- Okunlola, E.O.; Lipnick, M.S.; Batchelder, P.B.; Bernstein, M.; Feiner, J.R.; Bickler, E.P. Pulse Oximeter Performance, Racial Inequity, and the Work Ahead. Respir. Care 2021, 67, 252–257. [Google Scholar] [CrossRef] [PubMed]
- Valbuena, V.S.M.; Merchant, R.M.; Hough, C.L. Racial and Ethnic Bias in Pulse Oximetry and Clinical Outcomes. JAMA Intern. Med. 2022, 182, 699. [Google Scholar] [CrossRef] [PubMed]
- ISO 5725-4:2020; Accuracy (Trueness and Precision) of Measurement Methods and Results—Part 4: Basic Methods for the Determination of the Trueness of a Standard Measurement Method. 2020. Available online: https://www.iso.org/standard/69421.html (accessed on 2 January 2023).
- Le Manach, Y.; Collins, G. Disagreement between cardiac output measurement devices: Which device is the gold standard? Br. J. Anaesth. 2016, 116, 451–453. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Joint Committee for Guides of Metrology (JCGM). Available online: https://www.bipm.org/en/committees/jc/jcgm (accessed on 3 January 2023).
- Bureau International des Poids et Mesures (BIPM). Available online: https://www.bipm.org/en/home (accessed on 3 January 2023).
- Joint Committee for Guides in Metrology (JCGM). Guide to the Expression of Uncertainty in Measurement (GUM). 2020. Available online: https://www.bipm.org/en/committees/jc/jcgm (accessed on 3 January 2023).
- Joint Committee for Guides in Metrology (JCGM). International Vocabulary of Metrology–Basic and General Concepts and Associated Terms (VIM). JCGM 200, 3rd ed. 2012. Available online: https://www.bipm.org/en/committees/jc/jcgm (accessed on 3 January 2023).
- Welsh, M.B.; Navarro, D.J.; Begg, S.H. Number preference, precision and implicit confidence. In Proceedings of the 33rd Annual Meeting of the Cognitive Science Society (CogSci 2011), Boston, MA, USA, 20–32 July 2011; Carlson, L., Hoelscher, C., Shipley, T., Eds.; pp. 1521–1526. [Google Scholar]
- Vityazeva, T.; Vityazev, S.; Mikheev, A. Synchronization of heart rate and respiratory signals for HRV analysis. In Proceedings of the 2018 7th Mediterranean Conference on Embedded Computing (MECO), Budva, Montenegro, 10–14 June 2018. [Google Scholar]
Uncertainty Factor | Example | Study Design to Measure Uncertainty | Optimization |
---|---|---|---|
Measurement uncertainty | |||
Sensor | Sensor performance variability | Repeatability with multiple sensors on a single subject at the same time | Improve sensor quality control |
Subject | Within subject variability | Sample over an extended period of time; avoid aliasing | Ensure subject is in a stable state; reduce external perturbations |
Observer | Within observer variability | Repeatability with multiple measurements on multiple participants | Enhanced observer training, larger measurement sample, repeat observations or device forcing functions |
Context | Site, age, or disease state variability | Repeatability at different physical sites, in subjects of different ages, for different conditions or diseases | Adjust sensor and algorithms based on context |
Data capture | Number preference or low precision | Compare manual vs. electronic data collection; compare precision thresholds | Electronic data collection and maximum precision (two decimal places) |
Analysis | Averaging of results or counting events | Compare averaging methods (e.g., mean, median, mode, filter); compare counting with event intervals | Standardize averaging; use event interval |
Unknown | Uncertainty present that cannot be removed by optimizing other causes of uncertainty | Optimize all other sources of uncertainty | Not possible to optimize without identifying source |
Clinical decision uncertainty | |||
Threshold | Threshold based on expert opinion | Compare threshold to robust patient outcome | Threshold based on robust patient outcome |
Knowledge | Decision based on expert opinion | Compare decision to robust patient outcome | Decision based on robust patient outcome |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Ansermino, J.M.; Dumont, G.A.; Ginsburg, A.S. Measurement Uncertainty in Clinical Validation Studies of Sensors. Sensors 2023, 23, 2900. https://doi.org/10.3390/s23062900
Ansermino JM, Dumont GA, Ginsburg AS. Measurement Uncertainty in Clinical Validation Studies of Sensors. Sensors. 2023; 23(6):2900. https://doi.org/10.3390/s23062900
Chicago/Turabian StyleAnsermino, John Mark, Guy Albert Dumont, and Amy Sarah Ginsburg. 2023. "Measurement Uncertainty in Clinical Validation Studies of Sensors" Sensors 23, no. 6: 2900. https://doi.org/10.3390/s23062900
APA StyleAnsermino, J. M., Dumont, G. A., & Ginsburg, A. S. (2023). Measurement Uncertainty in Clinical Validation Studies of Sensors. Sensors, 23(6), 2900. https://doi.org/10.3390/s23062900