Feature reduction for hepatocellular carcinoma prediction using machine learning algorithms
G Mostafa, H Mahmoud, T Abd El-Hafeez… - Journal of Big Data, 2024 - Springer
Hepatocellular carcinoma (HCC) is a highly prevalent form of liver cancer that necessitates
accurate prediction models for early diagnosis and effective treatment. Machine learning …
accurate prediction models for early diagnosis and effective treatment. Machine learning …
An in-depth and contrasting survey of meta-heuristic approaches with classical feature selection techniques specific to cervical cancer
S Kurman, S Kisan - Knowledge and Information Systems, 2023 - Springer
Data mining and machine learning algorithms' performance is degraded by data of high-
dimensional nature due to an issue called “curse of dimensionality”. Feature selection is a …
dimensional nature due to an issue called “curse of dimensionality”. Feature selection is a …
A proficient two stage model for identification of promising gene subset and accurate cancer classification
Over the past few decades, there has been a massive growth in the volume of biological
data. In such datasets, the influence of dimensionality bias or existence of repetitive, noisy …
data. In such datasets, the influence of dimensionality bias or existence of repetitive, noisy …
Improving feature selection performance for classification of gene expression data using Harris Hawks optimizer with variable neighborhood learning
C Qu, L Zhang, J Li, F Deng, Y Tang… - Briefings in …, 2021 - academic.oup.com
Gene expression profiling has played a significant role in the identification and classification
of tumor molecules. In gene expression data, only a few feature genes are closely related to …
of tumor molecules. In gene expression data, only a few feature genes are closely related to …
A comparative study of nature-inspired metaheuristic algorithms using a three-phase hybrid approach for gene selection and classification in high-dimensional cancer …
Identification of informative genes is essential for the disease and cancer studies.
Metaheuristic algorithms have been widely used for this purpose. However, their …
Metaheuristic algorithms have been widely used for this purpose. However, their …
A multi-objective evolutionary algorithm based on length reduction for large-scale instance selection
F Cheng, F Chu, L Zhang - Information Sciences, 2021 - Elsevier
Instance selection, as an important data pre-processing task, is widely used in supervised
classification. Recently, a series of instance selection algorithms with different techniques …
classification. Recently, a series of instance selection algorithms with different techniques …
Rider-chicken optimization dependent recurrent neural network for cancer detection and classification using gene expression data
One of the deadly diseases prevailing worldwide is cancer. The rigorous symptoms of
cancers should be studied properly prior to the diagnosis to save patients life. Thus, an …
cancers should be studied properly prior to the diagnosis to save patients life. Thus, an …
Identify the Factors Influencing Suicide among Ardabil city People Using Feature Selection: Identify the Factors Influencing Suicide among Ardabil using machine …
F Amani, J Abdollahi, P Amani - 2024 10th International …, 2024 - ieeexplore.ieee.org
The prevalence of suicide, a serious public health issue, is still rising. The use of a patient's
self-reported suicidal ideation or evidence of prior suicide attempts, for example, as current …
self-reported suicidal ideation or evidence of prior suicide attempts, for example, as current …
A new hybrid method to detect risk of gastric cancer using machine learning techniques
A Zahmatkesh Zakariaee, H Sadr… - Journal of AI and …, 2023 - journals.shahroodut.ac.ir
Machine learning (ML) is a popular tool in healthcare while it can help to analyze large
amounts of patient data, such as medical records, predict diseases, and identify early signs …
amounts of patient data, such as medical records, predict diseases, and identify early signs …
Multiple Criteria Optimization (MCO): A gene selection deterministic tool in RStudio
Identifying genes with the largest expression changes (gene selection) to characterize a
given condition is a popular first step to drive exploration into molecular mechanisms and is …
given condition is a popular first step to drive exploration into molecular mechanisms and is …