Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Stratified Sampling Method01:16

Stratified Sampling Method

14.3K
Sampling is a technique to select a portion (or subset) of the larger population and study that portion (the sample) to gain information about the population. The sampling method ensures that samples are drawn without bias and accurately represent the population. Because measuring the entire population in a study is not practical, researchers use samples to represent the population of interest.
To choose a stratified sample, divide the population into groups called strata and then take a...
14.3K
Random Sampling Method01:09

Random Sampling Method

14.0K
Sampling is a technique to select a portion (or subset) of the larger population and study that portion (the sample) to gain information about the population. Data are the result of sampling from a population. The sampling method ensures that samples are drawn without bias and accurately represent the population. Because measuring the entire population in a study is not practical, researchers use samples to represent the population of interest. Among the various sampling methods used by...
14.0K
Cluster Sampling Method01:20

Cluster Sampling Method

13.8K
Appropriate sampling methods ensure that samples are drawn without bias and accurately represent the population. Because measuring the entire population in a study is not practical, researchers use samples to represent the population of interest.
To choose a cluster sample, divide the population into clusters (groups) and then randomly select some of the clusters. All the members from these clusters are in the cluster sample. For example, if you randomly sample four departments from your...
13.8K
Bootstrapping01:24

Bootstrapping

743
The term "bootstrap" originated in the 19th century as a metaphor for self-improvement or achieving something independently, without external assistance. This concept extends to statistical bootstrapping, a self-contained method for estimating population parameters through resampling, even though it can be computationally intensive. Developed by the American statistician Dr. Bradley Efron in 1979, bootstrapping provides a robust way to perform inference when the original sample size is...
743
Sampling Methods: Sample Types01:18

Sampling Methods: Sample Types

1.5K
Sampling materials are classified into three main types: solid, liquid, and gas.
Solid samples include a variety of substances, such as sediments from water bodies, soil, metals, and biological tissues. Two standard methods for extracting sediments from water bodies are grab sampling and piston coring. Grab sampling involves using a device to collect a discrete sediment sample from the bottom of a water body with minimal disturbance. Grab samples do not always represent the entire area due to...
1.5K
Sampling Methods: Overview01:06

Sampling Methods: Overview

1.6K
A sample refers to a smaller subset representative of a larger population. In analytical chemistry, studying or analyzing an entire population is often impractical or impossible. Therefore, samples are used to draw inferences and generalize the whole population. The sampling method selects individuals or items from a population to create a sample. Standard sampling methods include random, judgemental, systematic, stratified, and cluster sampling. 
In analytical chemistry, the choice of...
1.6K

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Development of certified reference materials of medium crude oil for water content with enhanced stability.

Talanta·2026
Same author

Enhancing knowledge graph recommendations through deep reinforcement learning.

Scientific reports·2026
Same author

Time-varying effect of venous hemodynamics in intensive care via neuromuscular electrical stimulation: a prospective' single-center' self-controlled study.

Scientific reports·2025
Same author

A self-supervised group recommendation model with conformity awareness.

Scientific reports·2025
Same author

Recommendation of deep reinforcement learning based on value function considering error reduction.

Scientific reports·2025
Same author

Controllable mechanochromic responses in fluorescent elastomers <i>via</i> perylene bisimide aggregation engineering.

Chemical communications (Cambridge, England)·2025

Related Experiment Video

Updated: Dec 19, 2025

Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances
07:35

Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances

Published on: October 11, 2018

7.9K

A hybrid sampling algorithm combining M-SMOTE and ENN based on Random forest for medical imbalanced data.

Zhaozhao Xu1, Derong Shen1, Tiezheng Nie1

  • 1School of Computer Science and Engineering, Northeastern University, Shenyang 110819, China.

Journal of Biomedical Informatics
|June 9, 2020
PubMed
Summary
This summary is machine-generated.

This study introduces RFMSE, a novel hybrid sampling algorithm for imbalanced medical data classification. RFMSE effectively identifies patients without misclassifying healthy individuals, improving diagnostic accuracy.

Keywords:
Data resamplingImbalanced data classificationMedical diagnosisRandom forest

More Related Videos

A Machine Learning Approach to Design an Efficient Selective Screening of Mild Cognitive Impairment
12:18

A Machine Learning Approach to Design an Efficient Selective Screening of Mild Cognitive Impairment

Published on: January 11, 2020

7.8K
Author Spotlight: Impact of Intergenic Interactions on Disease-Identifying Dark Biomarkers
03:37

Author Spotlight: Impact of Intergenic Interactions on Disease-Identifying Dark Biomarkers

Published on: March 1, 2024

1.2K

Related Experiment Videos

Last Updated: Dec 19, 2025

Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances
07:35

Selecting Multiple Biomarker Subsets with Similarly Effective Binary Classification Performances

Published on: October 11, 2018

7.9K
A Machine Learning Approach to Design an Efficient Selective Screening of Mild Cognitive Impairment
12:18

A Machine Learning Approach to Design an Efficient Selective Screening of Mild Cognitive Impairment

Published on: January 11, 2020

7.8K
Author Spotlight: Impact of Intergenic Interactions on Disease-Identifying Dark Biomarkers
03:37

Author Spotlight: Impact of Intergenic Interactions on Disease-Identifying Dark Biomarkers

Published on: March 1, 2024

1.2K

Area of Science:

  • Machine Learning
  • Medical Data Analysis
  • Bioinformatics

Background:

  • Medical diagnosis frequently encounters imbalanced data, where misclassifying patients carries a higher cost than healthy individuals.
  • Traditional algorithms struggle with imbalanced datasets, often assuming equal misclassification costs and sample sizes.
  • Accurate identification of patients in imbalanced medical datasets remains a critical challenge.

Purpose of the Study:

  • To address the challenge of imbalanced data classification in medical diagnosis.
  • To propose a novel hybrid sampling algorithm, RFMSE, for improved patient identification.
  • To enhance classification performance without compromising the accuracy of healthy sample classification.

Main Methods:

  • Developed RFMSE, a hybrid algorithm combining Misclassification-oriented Synthetic minority over-sampling technique (M-SMOTE), Edited Nearest Neighbor (ENN), and Random Forest (RF).
  • M-SMOTE over-samples minority class (patients) based on RF misclassification rate.
  • ENN removes noisy majority class (healthy) samples, followed by RF classification with MCC-based iteration stopping.

Main Results:

  • RFMSE demonstrated effectiveness in solving imbalanced data classification problems across ten UCI datasets.
  • The proposed method significantly improved F-value and Matthews Correlation Coefficient (MCC) compared to traditional algorithms.
  • RFMSE enhances the identification of minority class samples while maintaining high classification performance.

Conclusions:

  • RFMSE offers a robust solution for imbalanced data classification in medical diagnosis.
  • The hybrid approach effectively balances the dataset and improves diagnostic prediction accuracy.
  • This algorithm provides a valuable tool for improving patient identification in clinical settings.