ML-Based Cardiac Arrhythmia Diagnosis using ECG and PPG Signal Features
Regular price
$32.99
Regular price
Sale price
$32.99
Unit price
per
Couldn't load pickup availability
Availability:
In stock
SKU:
9786801031627
Regular price
$32.99
Regular price
Sale price
$32.99
"ML-Based Cardiac Arrhythmia Diagnosis using ECG and PPG Signal Features" by Lakshmi Devi R. is an innovative and comprehensive study on the use of machine learning algorithms for the diagnosis of cardiac arrhythmia using electrocardiogram (ECG) and photoplethysmogram (PPG) signal features.
Through detailed research and analysis, Lakshmi Devi R. highlights the potential benefits of machine learning in accurately detecting various types of cardiac arrhythmias. The author also discusses the significance of using both ECG and PPG signals to improve the accuracy of the diagnosis.
Whether you are a healthcare professional looking for new approaches to diagnosing cardiac arrhythmias or a researcher interested in the latest advancements in the field, "ML-Based Cardiac Arrhythmia Diagnosis using ECG and PPG Signal Features" is an essential resource.
Order your copy today and discover how machine learning can play a vital role in improving the accuracy and efficiency of cardiac arrhythmia diagnosis.
Publisher: Independent Author
Published: 04/03/2023
Pages: 184
Weight: 0.56lbs
Size: 9.00h x 6.00w x 0.39d
ISBN: 9786801031627
Through detailed research and analysis, Lakshmi Devi R. highlights the potential benefits of machine learning in accurately detecting various types of cardiac arrhythmias. The author also discusses the significance of using both ECG and PPG signals to improve the accuracy of the diagnosis.
Whether you are a healthcare professional looking for new approaches to diagnosing cardiac arrhythmias or a researcher interested in the latest advancements in the field, "ML-Based Cardiac Arrhythmia Diagnosis using ECG and PPG Signal Features" is an essential resource.
Order your copy today and discover how machine learning can play a vital role in improving the accuracy and efficiency of cardiac arrhythmia diagnosis.
Publisher: Independent Author
Published: 04/03/2023
Pages: 184
Weight: 0.56lbs
Size: 9.00h x 6.00w x 0.39d
ISBN: 9786801031627