Close Menu
Healthtost
  • News
  • Mental Health
  • Men’s Health
  • Women’s Health
  • Skin Care
  • Sexual Health
  • Pregnancy
  • Nutrition
  • Fitness
  • Recommended Essentials
What's Hot

I didn’t sleep so well. Should I still exercise? | The Wellness Blog

May 15, 2026

The impact of Covid-19 on young people’s access to contraceptives and contraceptive services

May 15, 2026

Measles is back in the news. See what pregnant women need to know.

May 15, 2026
Facebook X (Twitter) Instagram
  • About Us
  • Contact Us
  • Privacy Policy
  • Terms and Conditions
  • Disclaimer
Facebook X (Twitter) Instagram
Healthtost
SUBSCRIBE
  • News

    ExiVex reports human pharmacokinetic data showing that intranasal naloxone EMRX-101 approaches peak plasma concentrations similar to IV with a significantly faster Tmax than the currently approved comparator

    May 15, 2026

    Perioperative medicine is emerging as a system-wide strategy for better surgical outcomes

    May 14, 2026

    Regular arts and physical activity are associated with slow aging

    May 14, 2026

    The study links obesity with less pleasurable feelings during physical activity

    May 13, 2026

    Study challenges structural explanation for bowel symptoms in hEDS patients

    May 13, 2026
  • Mental Health

    Are you caught in the cycle of chronic pain? How does Thera…

    May 15, 2026

    Why Menopause Matters in Substance Use Disorder Prevention, Treatment, and Recovery

    May 14, 2026

    because you might be right to leave a party without saying goodbye

    May 14, 2026

    Are antidepressants dangerous? The truth about violence, overuse and fear

    May 11, 2026

    Feel like a fraud? Understanding Imp…

    May 10, 2026
  • Men’s Health

    10 Best Bodyweight Movements for Strength and Muscle

    May 14, 2026

    Two leading cardiac risk tools pass a major global test

    May 12, 2026

    Beyond symptoms: Into the push to finally change the effects of cerebral palsy

    May 12, 2026

    Mix up your workout with Myo-Reps

    May 11, 2026

    The Future of the USA: Why Empires End After 250 Years and What We Should Do Now

    May 11, 2026
  • Women’s Health

    I didn’t sleep so well. Should I still exercise? | The Wellness Blog

    May 15, 2026

    Minoxidil 5%: A proven solution for hair regeneration

    May 14, 2026

    Postpartum sexuality research reveals common ‘desire gap’

    May 13, 2026

    Paula Poundstone on the healing power of humor

    May 12, 2026

    What is SPF? A guide to Indian skin

    May 10, 2026
  • Skin Care

    Night Serum: What to use for best results overnight

    May 15, 2026

    7 Anti-Aging Foods That Slow Aging and Make You Look Younger

    May 14, 2026

    Benefits, uses and how to get glowing skin naturally – The natural wash

    May 14, 2026

    How to protect your skin from the sun – Tropic Skincare

    May 13, 2026

    The best allergen-free makeup for sensitive skin

    May 9, 2026
  • Sexual Health

    The impact of Covid-19 on young people’s access to contraceptives and contraceptive services

    May 15, 2026

    Are the symptoms of gonorrhea different in men and women?

    May 15, 2026

    How to choose the right program — Sexual Health Alliance

    May 14, 2026

    How to increase nitric oxide and without sexual health benefits

    May 12, 2026

    2026 Mother’s Day Gift Guide: Pleasure & Wellness

    May 11, 2026
  • Pregnancy

    Measles is back in the news. See what pregnant women need to know.

    May 15, 2026

    What your strange pregnancy cravings are trying to tell you

    May 14, 2026

    Doctor Birth Story with Dr. Manisha Ghimire

    May 11, 2026

    What they are, how they work and why parents love them

    May 11, 2026

    Folic acid before pregnancy may help reduce the risk of birth defects for women taking epilepsy drugs

    May 10, 2026
  • Nutrition

    Menstrual Nutrition: The right way to eat for your period

    May 14, 2026

    How we eat vs. How we think we eat

    May 13, 2026

    Because stress shows up in your gut

    May 12, 2026

    Why Weight Loss Isn’t The Key To Better Health (And What Is)

    May 11, 2026

    The best supplements for fatty liver disease

    May 9, 2026
  • Fitness

    In Ozempic or Wegovy? Here’s the one thing you can’t miss.

    May 14, 2026

    Danger Coffee Review: Worth the Hype? My honest opinion

    May 12, 2026

    It happened again. | Nerd Fitness

    May 12, 2026

    5 Top Dental Health Tips for Preschoolers

    May 11, 2026

    The best Mother’s Day ideas to create lasting memories together

    May 11, 2026
  • Recommended Essentials
Healthtost
Home»News»New machine learning model makes breakthrough in predicting heart disease with over 95% accuracy
News

New machine learning model makes breakthrough in predicting heart disease with over 95% accuracy

healthtostBy healthtostApril 5, 2024No Comments4 Mins Read
Facebook Twitter Pinterest LinkedIn Tumblr Reddit WhatsApp Email
New Machine Learning Model Makes Breakthrough In Predicting Heart Disease
Share
Facebook Twitter LinkedIn Pinterest WhatsApp Email

In a recent study published in Scientific Reportsresearchers developed a machine learning-based heart disease prediction model (ML-HDPM) that uses various combinations of information and numerous recognized classification methods.

Study: Comprehensive evaluation and performance analysis of machine learning in heart disease prediction. Image credit: Summit Art Creations/Shutterstock.com

Record

Heart disease is a global health risk that healthcare professionals must assess and treat with medical tests, advanced imaging techniques and diagnostic procedures. Promoting heart-healthy practices and early diagnosis can help minimize the incidence of cardiovascular disease and improve overall health.

Current approaches such as machine learning, deep learning, and sensor-based data collection produce promising findings, but have limitations such as uneven diagnostic accuracy and overfitting.

The proposed approaches use modern technology and feature selection procedures to improve heart disease diagnosis and prognosis.

About the study

In the current study, the researchers constructed the ML-HDPM model for accurate heart disease prediction.

The researchers used the Cleveland database, the Swiss database, the Long Beach database, and the Hungarian database to obtain cardiovascular data. Clinical data were preprocessed followed by feature selection, feature extraction, cluster-based oversampling and classification.

They used training data to fit the model with the feature set, calculate the importance scores, and remove the lowest feature scores to achieve the desired feature.

The genetic algorithm (GA) involved population initialization, selection, crossover, and mutation to determine whether the termination criterion was met.

Researchers computed majority-labeled raw data samples and clustered minority-labeled samples to merge the training set and perform synthetic minority oversampling (SMOTE) to generate model output.

The model selects relevant features using the recursive feature elimination method (RFEM) and genetic algorithm (GA), which improves the robustness of the model. Techniques such as the oversampling undersampling clustering technique (USCOM) correct for data imbalances.

The classification work uses multi-layer deep convolutional neural networks (MLDCNN) and the adaptive elephant herd optimization method (AEHOM).

The model classifiers were principal component analysis (PCA), support vector machine (SVM), linear discriminant analysis (LDA), decision tree (DT), random forest (RF), and naive Bayes (NB).

The model combines supervised infinite feature selection with an upgraded weighted random forest algorithm. The ML-HDPM preprocessing step ensures data integrity and model efficiency. Extensive feature selection reveals important properties for predictive modeling.

A scalar technique achieves a consistent feature result, while SMOTE corrects for class imbalance. The genetic algorithm uses principles of natural selection to generate many solutions in a single generation.

The performance of the strategy is evaluated through simulation tests and compared with existing models. The test, training, and validation datasets included 80%, 10%, and 10% data, respectively.

Results

ML-HDPM performed admirably across a wide range of critical evaluation criteria, as evidenced by comprehensive testing. Using training data, the ML-HDPM model predicted cardiovascular disease with 96% accuracy and 95% accuracy.

The system’s sensitivity (recall) yielded a precision of 96%, while F-scores of 92% reflect its balanced performance. ML-HDPM specificity of 90% is remarkable.

ML-HDPM provides accurate and reliable results. It incorporates complex technologies such as feature selection, data balancing, deep learning, and adaptive elephant herding optimization (AEHOM). These strategies allow the model to reliably predict heart disease, which improves clinical decisions and patient outcomes.

ML-HDPM outperforms other algorithms in training (95%) and testing (88%). Success is due to the combination of complex feature extraction, data imbalance corrections and machine learning.

Feature selection algorithms enable finding important properties associated with cardiovascular health, allowing them to detect distinctive patterns indicative of cardiovascular disease.

Data correction using effective data smoothing techniques guarantees model training on representative datasets, including deep learning using the MLDCNN approach and AEHOM optimization to improve model accuracy.

ML-HDPM, a deep learning model, has lower false positive rates (FPR) in training (8.20%) and testing (15%) than other approaches due to feature selections, data balance, and improved machine learning components in ML-HDPM .

The model had high true positive rates (TPR) on the training (96%) and testing (91%) datasets due to feature recognition, data balance, and deep learning improvements. The approach improves the model’s ability to detect true positives.

conclusion

The study presents a unique ML-HDPM approach that integrates feature selection, data balancing, and machine learning to improve CVD prediction.

Balanced F-values ​​for precision and recall, high precision and accuracy, and low false-positive rates in the training and test datasets highlight the promising potential of the model in cardiovascular diagnostic applications.

The findings show that the ML-HDPM model can increase the accuracy and speed of cardiovascular disease identification, thereby improving the standard of care.

However, further investigation is needed to improve model optimization and data quality and to investigate its use by healthcare professionals in real-world settings.

accuracy breakthrough disease heart learning Machine model predicting
bhanuprakash.cg
healthtost
  • Website

Related Posts

ExiVex reports human pharmacokinetic data showing that intranasal naloxone EMRX-101 approaches peak plasma concentrations similar to IV with a significantly faster Tmax than the currently approved comparator

May 15, 2026

Perioperative medicine is emerging as a system-wide strategy for better surgical outcomes

May 14, 2026

Regular arts and physical activity are associated with slow aging

May 14, 2026

Leave A Reply Cancel Reply

Don't Miss
Women's Health

I didn’t sleep so well. Should I still exercise? | The Wellness Blog

By healthtostMay 15, 20260

By Daniel Heller, MSc, CSCS, RSCC We’ve all had a bad night’s sleep. And we’ve…

The impact of Covid-19 on young people’s access to contraceptives and contraceptive services

May 15, 2026

Measles is back in the news. See what pregnant women need to know.

May 15, 2026

ExiVex reports human pharmacokinetic data showing that intranasal naloxone EMRX-101 approaches peak plasma concentrations similar to IV with a significantly faster Tmax than the currently approved comparator

May 15, 2026
Stay In Touch
  • Facebook
  • Twitter
  • Pinterest
  • Instagram
  • YouTube
  • Vimeo
TAGS
Baby benefits body brain cancer care Day Diet disease exercise finds Fitness food Guide health healthy heart Improve Life Loss Men mental Natural Nutrition Patients Pregnancy research reveals risk routine sex sexual Skin Skincare study Therapy Tips Top Training Treatment Understanding ways weight women Workout
About Us
About Us

Welcome to HealthTost, your trusted source for breaking health news, expert insights, and wellness inspiration. At HealthTost, we are committed to delivering accurate, timely, and empowering information to help you make informed decisions about your health and well-being.

Latest Articles

I didn’t sleep so well. Should I still exercise? | The Wellness Blog

May 15, 2026

The impact of Covid-19 on young people’s access to contraceptives and contraceptive services

May 15, 2026

Measles is back in the news. See what pregnant women need to know.

May 15, 2026
New Comments
    Facebook X (Twitter) Instagram Pinterest
    • About Us
    • Contact Us
    • Privacy Policy
    • Terms and Conditions
    • Disclaimer
    © 2026 HealthTost. All Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.