Machine learning for big data analytics in plants

C Ma, HH Zhang, X Wang - Trends in plant science, 2014 - cell.com
Rapid advances in high-throughput genomic technology have enabled biology to enter the
era of 'Big Data'(large datasets). The plant science community not only needs to build its …

Predicting novel microRNA: a comprehensive comparison of machine learning approaches

G Stegmayer, LE Di Persia, M Rubiolo… - Briefings in …, 2019 - academic.oup.com
Motivation The importance of microRNAs (miRNAs) is widely recognized in the community
nowadays because these short segments of RNA can play several roles in almost all …

Web-based NGS data analysis using miRMaster: a large-scale meta-analysis of human miRNAs

T Fehlmann, C Backes, M Kahraman… - Nucleic acids …, 2017 - academic.oup.com
The analysis of small RNA NGS data together with the discovery of new small RNAs is
among the foremost challenges in life science. For the analysis of raw high-throughput …

Imbalance learning using heterogeneous ensembles

HG Zefrehi, H Altınçay - Expert Systems with Applications, 2020 - Elsevier
In binary classification, class-imbalance problem occurs when the number of samples in one
class is much larger than that of the other class. In such cases, the performance of a …

Efficient bladder cancer diagnosis using an improved RIME algorithm with Orthogonal Learning

ME Hosney, EH Houssein, MR Saad, NA Samee… - Computers in Biology …, 2024 - Elsevier
Bladder cancer (BC) diagnosis presents a critical challenge in biomedical research,
necessitating accurate tumor classification from diverse datasets for effective treatment …

GeneAI 3.0: powerful, novel, generalized hybrid and ensemble deep learning frameworks for miRNA species classification of stationary patterns from nucleotides

J Singh, NN Khanna, RK Rout, N Singh, JR Laird… - Scientific reports, 2024 - nature.com
Due to the intricate relationship between the small non-coding ribonucleic acid (miRNA)
sequences, the classification of miRNA species, namely Human, Gorilla, Rat, and Mouse is …

HBoost: A heterogeneous ensemble classifier based on the Boosting method and entropy measurement

HR Kadkhodaei, AME Moghadam… - Expert Systems with …, 2020 - Elsevier
In recent years, ensemble classifiers have attracted a lot of attention in the field of machine
learning. The main challenges with these classifiers are 1) to select the base classifiers and …

Identifying maximum imbalance in datasets for fault diagnosis of gearboxes

P Santos, J Maudes, A Bustillo - Journal of Intelligent Manufacturing, 2018 - Springer
Research into fault diagnosis in rotating machinery with a wide range of variable loads and
speeds, such as the gearboxes of wind turbines, is of great industrial interest. Although …

Predicting prolonged length of ICU stay through machine learning

J Wu, Y Lin, P Li, Y Hu, L Zhang, G Kong - Diagnostics, 2021 - mdpi.com
This study aimed to construct machine learning (ML) models for predicting prolonged length
of stay (pLOS) in intensive care units (ICU) among general ICU patients. A multicenter …

Preoperative prediction of muscular invasiveness of bladder cancer with radiomic features on conventional MRI and its high-order derivative maps

X Xu, Y Liu, X Zhang, Q Tian, Y Wu, G Zhang… - Abdominal …, 2017 - Springer
Purpose To determine radiomic features which are capable of reflecting muscular
invasiveness of bladder cancer (BC) and propose a non-invasive strategy for the …