» Articles » PMID: 32078712

IoT Based Predictive Maintenance Management of Medical Equipment

Overview
Journal J Med Syst
Date 2020 Feb 21
PMID 32078712
Citations 11
Authors
Affiliations
Soon will be listed here.
Abstract

Technological advancements are the main drivers of the healthcare industry as it has a high impact on delivering the best patient care. Recent years witnessed unprecedented growth in the number of medical equipment manufactured to aid high-quality patient care at a fast pace. With this growth of medical equipment, hospitals need to adopt optimal maintenance strategies that enhance the performance of their equipment and attempt to reduce their maintenance costs and effort. In this work, a Predictive Maintenance (PdM) approach is presented to help in failure diagnosis for critical equipment with various and frequent failure mode(s). The proposed approach relies on the understanding of the physics of failure, real-time collection of the right parameters using the Internet of Things (IoT) technology, and utilization of machine learning tools to predict and classify healthy and faulty equipment status. Moreover, transforming traditional maintenance into PdM has to be supported by an economic analysis to prove the feasibility and efficiency of transformation. The applicability of the approach was demonstrated using a case study from a local hospital in the United Arab Emirates (UAE) where the Vitros-Immunoassay analyzer was selected based on maintenance events and criticality assessment as a good candidate for transforming maintenance from corrective to predictive. The dominant failure mode is metering arm belt slippage due to wear out of belt and movement of pulleys which can be predicted using vibration signals. Vibration real data is collected using wireless accelerometers and transferred to a signal analyzer located on a cloud or local computer. Features extracted and selected are analyzed using Support Vector Machine (SVM) to detect the faulty condition. In terms of economics, the proposed approach proved to provide significant diagnostic and repair cost savings that can reach up to 25% and an investment payback period of one year. The proposed approach is scalable and can be used across medical equipment in large medical centers.

Citing Articles

Artificial Intelligence and/or Machine Learning Algorithms in Microalgae Bioprocesses.

Imamoglu E Bioengineering (Basel). 2024; 11(11).

PMID: 39593803 PMC: 11592280. DOI: 10.3390/bioengineering11111143.


An Efficient Prediction Model on the Operation Quality of Medical Equipment Based on Improved Sparrow Search Algorithm-Temporal Convolutional Network-BiLSTM.

Lin Z, Ji Z Sensors (Basel). 2024; 24(17).

PMID: 39275500 PMC: 11397750. DOI: 10.3390/s24175589.


Strategies for overcoming data scarcity, imbalance, and feature selection challenges in machine learning models for predictive maintenance.

Hakami A Sci Rep. 2024; 14(1):9645.

PMID: 38671068 PMC: 11053123. DOI: 10.1038/s41598-024-59958-9.


Medical equipment effectiveness evaluation model based on cone-constrained DEA and attention-based bi-LSTM.

Huang L, Lv W, Huang Q, Zhang H, Jin S, Chen T Sci Rep. 2024; 14(1):9324.

PMID: 38654056 PMC: 11039725. DOI: 10.1038/s41598-024-59852-4.


Remaining Useful Life Estimation of MoSi Heating Element in a Pusher Kiln Process.

Irfan H, Liao P, Taipabu M, Wu W Sensors (Basel). 2024; 24(5).

PMID: 38475022 PMC: 10933939. DOI: 10.3390/s24051486.


References
1.
Miler M, Nikolac Gabaj N, Dukic L, Simundic A . Key Performance Indicators to Measure Improvement After Implementation of Total Laboratory Automation Abbott Accelerator a3600. J Med Syst. 2017; 42(2):28. DOI: 10.1007/s10916-017-0878-1. View

2.
Hozo S, Djulbegovic B, Hozo I . Estimating the mean and variance from the median, range, and the size of a sample. BMC Med Res Methodol. 2005; 5:13. PMC: 1097734. DOI: 10.1186/1471-2288-5-13. View

3.
Hamdi N, Oweis R, Abu Zraiq H, Sammour D . An intelligent healthcare management system: a new approach in work-order prioritization for medical equipment maintenance requests. J Med Syst. 2010; 36(2):557-67. DOI: 10.1007/s10916-010-9501-4. View

4.
Castro L, Lefebvre E, Lefebvre L . Adding intelligence to mobile asset management in hospitals: the true value of RFID. J Med Syst. 2013; 37(5):9963. DOI: 10.1007/s10916-013-9963-2. View

5.
Gurbeta L, Dzemic Z, Bego T, Sejdic E, Badnjevic A . Testing of Anesthesia Machines and Defibrillators in Healthcare Institutions. J Med Syst. 2017; 41(9):133. DOI: 10.1007/s10916-017-0783-7. View