Multivariate time-series sensor vital sign forecasting of cardiovascular and chronic respiratory diseases
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gp-bibliography.bib Revision:1.8081
- @Article{AHMED:2023:suscom,
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author = "Usman Ahmed and Jerry Chun-Wei Lin and
Gautam Srivastava",
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title = "Multivariate time-series sensor vital sign forecasting
of cardiovascular and chronic respiratory diseases",
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journal = "Sustainable Computing: Informatics and Systems",
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volume = "38",
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pages = "100868",
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year = "2023",
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ISSN = "2210-5379",
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DOI = "doi:10.1016/j.suscom.2023.100868",
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URL = "https://www.sciencedirect.com/science/article/pii/S2210537923000239",
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keywords = "genetic algorithms, genetic programming, Machine
learning, Sensor data, Cardiovascular disease, Chronic
respiratory disease. TPOT",
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abstract = "Approximately 19 million people die each year from
cardiovascular and chronic respiratory diseases. As a
result of the recent Covid-19 epidemic, blood pressure,
cholesterol, and blood sugar levels have risen. Not
only do healthcare institutions benefit from studying
physiological vital signs, but individuals also benefit
from being alerted to health problems in a timely
manner. This study uses machine learning to categorize
and predict cardiovascular and chronic respiratory
diseases. By predicting a patient's health status,
caregivers and medical professionals can be alerted
when needed. We predicted vital signs for 180 seconds
using real-world vital sign data. A person's life can
be saved if caregivers react quickly and anticipate
emergencies. The tree-based pipeline optimization
method (TPOT) is used instead of manually adjusting
machine learning classifiers. This paper focuses on
optimizing classification accuracy by combining feature
pre-processors and machine learning models with TPOT
genetic programming making use of linear and Prophet
models to predict important indicators. The TPOT tuning
parameter combines predicted values with classical
classification models such as Naive Bayes, Support
Vector Machines, and Random Forests. As a result of
this study, we show the importance of categorizing and
increasing the accuracy of predictions. The proposed
model achieves its adaptive behavior by conceptually
incorporating different machine learning classifiers.
We compare the proposed model with several
state-of-the-art algorithms using a large amount of
training data. Test results at the University of
Queensland using 32 patient's data showed that the
proposed model outperformed existing algorithms,
improving the classification of cardiovascular disease
from 0.58 to 0.71 and chronic respiratory disease from
0.49 to 0.70, respectively, while minimizing the mean
percent error in vital signs. Our results suggest that
the Facebook Prophet prediction model in conjunction
with the TPOT classification model can correctly
diagnose a patient's health status based on abnormal
vital signs and enables patients to receive prompt
medical attention",
- }
Genetic Programming entries for
Usman Ahmed
Jerry Chun-Wei Lin
Gautam Srivastava
Citations