Towards an efficient prognostic model for fetal state assessment

Monitoring signals such as fetal heart rate (FHR) are important indicators of fetal well-being. Computer-assisted analysis of FHR patterns has been successfully used as a decision support tool. However, the absence of a gold standard for the building blocks decision-making in the systems design proc...

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Veröffentlicht in:Measurement : journal of the International Measurement Confederation 2021-11, Vol.185, p.110034, Article 110034
Hauptverfasser: Silva Neto, Manuel Gonçalves da, Madeiro, João Paulo do Vale, Marques, João Alexandre Lobo, Gomes, Danielo G.
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container_title Measurement : journal of the International Measurement Confederation
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Madeiro, João Paulo do Vale
Marques, João Alexandre Lobo
Gomes, Danielo G.
description Monitoring signals such as fetal heart rate (FHR) are important indicators of fetal well-being. Computer-assisted analysis of FHR patterns has been successfully used as a decision support tool. However, the absence of a gold standard for the building blocks decision-making in the systems design process impairs the development of new solutions. Here we propose a prognostic model based on advanced signal processing techniques and machine learning algorithms for the fetal state assessment within a comprehensive evaluation process. Feature-engineering-based and time-series-based machine learning classifiers were modeled into three data segmentation schemas for CTU-UHB, HUFA, and DB-TRIUM datasets and the generalization performance was assessed by a two-way cross-dataset evaluation. It has been shown that the feature-based algorithms outperformed the time-series ones on data-limited scenarios. The Support Vector Machines (SVM) obtained the best results on the datasets individually: specificity (85.6% ) and sensitivity (67.5%). On the other hand, the most effective generalization results were achieved by the Multi-layer perceptron (MLP) with a specificity of 71.6% and sensitivity of 61.7%. The overall process provided a combination of techniques and methods that increased the final prognostic model performance, achieving relevant results and requiring a smaller amount of data when compared to the state-of-the-art fetal status assessment solutions. •A custom-made prognostic model within a systematic design process was proposed.•Nine binary classification algorithms were compared.•Extensive data-driven evaluation was carried.•The resulting design recommendations improved the model performance.
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subjects Algorithms
Cardiotocography
Classification
Datasets
Decision analysis
Decision support systems
Fetal state assessment
Fetuses
Heart rate
Machine learning
Medical imaging
Multilayers
Prognostic model
Segmentation
Sensitivity
Signal monitoring
Signal processing
Support vector machines
System design
Systems design
title Towards an efficient prognostic model for fetal state assessment
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