Predicting human miRNA disease association with minimize matrix nuclear norm DOI Creative Commons
Ahmet Toprak

Scientific Reports, Journal Year: 2024, Volume and Issue: 14(1)

Published: Dec. 28, 2024

microRNAs (miRNAs) are non-coding RNA molecules that influence the development and progression of many diseases. Research have documented miRNAs a significant role in prevention, diagnosis, treatment complex human Recently, scientists devoted extensive resources to attempting find connections between Since experimental methods used discover new miRNA-disease associations time-consuming expensive, computational been developed. In this research, novel method based on matrix decomposition was proposed predict Furthermore, nuclear norm minimization employed acquire breast cancer-associated miRNAs. We then evaluated effectiveness our by utilizing two different cross-validation techniques results were compared seven methods. Moreover, case study cancer further validated technique, confirming its predictive accuracy. These demonstrate is reliable model for uncovering potential relationships.

Language: Английский

SMAP: Similarity-based matrix factorization framework for inferring miRNA-disease association DOI
Jihwan Ha

Knowledge-Based Systems, Journal Year: 2023, Volume and Issue: 263, P. 110295 - 110295

Published: Jan. 13, 2023

Language: Английский

Citations

34

Hybrid Techniques for the Diagnosis of Acute Lymphoblastic Leukemia Based on Fusion of CNN Features DOI Creative Commons

Ibrahim Abdulrab Ahmed,

Ebrahim Mohammed Senan,

Hamzeh Salameh Ahmad Shatnawi

et al.

Diagnostics, Journal Year: 2023, Volume and Issue: 13(6), P. 1026 - 1026

Published: March 8, 2023

Acute lymphoblastic leukemia (ALL) is one of the deadliest forms due to bone marrow producing many white blood cells (WBC). ALL most common types cancer in children and adults. Doctors determine treatment according its stages spread body. rely on analyzing samples under a microscope. Pathologists face challenges, such as similarity between infected normal WBC early stages. Manual diagnosis prone errors, differences opinion, lack experienced pathologists compared number patients. Thus, computer-assisted systems play an essential role assisting detection ALL. In this study, with high efficiency accuracy were developed analyze images C-NMC 2019 ALL-IDB2 datasets. all proposed systems, micrographs improved then fed active contour method extract WBC-only regions for further analysis by three CNN models (DenseNet121, ResNet50, MobileNet). The first strategy two datasets hybrid technique CNN-RF CNN-XGBoost. DenseNet121, MobileNet deep feature maps. produce features redundant non-significant features. So, maps Principal Component Analysis (PCA) select highly representative sent RF XGBoost classifiers classification using serially fused models. DenseNet121-ResNet50, ResNet50-MobileNet, DenseNet121-MobileNet, DenseNet121-ResNet50-MobileNet merged classified XGBoost. classifier reached AUC 99.1%, 98.8%, sensitivity 98.45%, precision 98.7%, specificity 98.85% dataset. With dataset, achieved 100% results AUC, accuracy, sensitivity, precision, specificity.

Language: Английский

Citations

25

Optimizing an English text reading recommendation model by integrating collaborative filtering algorithm and FastText classification method DOI Creative Commons
Ke Yan

Heliyon, Journal Year: 2024, Volume and Issue: 10(9), P. e30413 - e30413

Published: April 26, 2024

To comprehend the genuine reading habits and preferences of diverse user cohorts furnish tailored recommendations, this study introduces an English text recommendation model designed specifically for long-tail users. This integrates collaborative filtering algorithms with FastText classification method. Initially, integrated algorithm is explicated, followed by calculation user's interest distribution across various types texts, achieved through enhanced Ebbinghaus forgetting curve analysis behaviors. Subsequently, intelligent generated amalgamating association rule-based algorithms. Through optimization generation process, model's accuracy enhanced, thereby augmenting performance satisfaction system. Finally, a comparative conducted respect to Top-N model, matrix factorization-based illustrating superior F-Measure value proposed model. The findings indicate that when list contains 10, 30, 50, 70 0.75, 0.79, 0.8, 0.74, respectively, outperforming other Furthermore, as number texts increases, all four models gradually improves, final reaching 0.81. Notably, in significantly surpasses three methods. Demonstrating commendable recall rate, root mean square error, normalized cumulative gain, precision, accuracy, adeptly reflects interests, enhancing recommendations overall system performance. offer crucial insights guidance efficacy systems.

Language: Английский

Citations

11

LncRNA Expression Profile-Based Matrix Factorization for Predicting lncRNA- Disease Association DOI Creative Commons
Jihwan Ha

IEEE Access, Journal Year: 2024, Volume and Issue: 12, P. 70297 - 70304

Published: Jan. 1, 2024

Long non-coding RNAs (lncRNAs) play significant roles in multiple biological processes and contribute to the progression development of various human diseases. Therefore, it is necessary decipher novel lncRNA-disease associations from perspective biomarker detection. Numerous computational models have been designed identify using machine learning. However, many these fail effectively incorporate heterogeneous datasets, which can lead reduced model accuracy performance. In this study, we propose a lncRNA expression profile-based matrix factorization method that applies profiles (EMFLDA). Matrix learning exhibits excellent performance not only recommender systems, but also scientific areas. We applied as weights for proposed model, allowed integration information thereby improved As result, EMFLDA outperformed four previous terms AUC scores, achieving scores 0.9042 0.8841 based on leave-one-out cross-validation five-fold cross-validation, respectively. Thus, EMFLDA, serves an effective tool identifying disease-related lncRNAs, plays pivotal role extracting disease biomarkers.

Language: Английский

Citations

8

Graph Convolutional Network with Neural Collaborative Filtering for Predicting miRNA-Disease Association DOI Creative Commons
Jihwan Ha

Biomedicines, Journal Year: 2025, Volume and Issue: 13(1), P. 136 - 136

Published: Jan. 8, 2025

Background: Over the past few decades, micro ribonucleic acids (miRNAs) have been shown to play significant roles in various biological processes, including disease incidence. Therefore, much effort has devoted discovering pivotal of miRNAs incidence understand underlying pathogenesis human diseases. However, identifying miRNA-disease associations using experiments is inefficient terms cost and time. Methods: Here, we discuss a novel machine-learning model that effectively predicts disease-related graph convolutional neural network with collaborative filtering (GCNCF). By applying network, could capture important feature vectors present while preserving structure. exploiting filtering, were learned through matrix factorization deep learning, identified. Results: Extensive experimental results based on area under curve (AUC) scores (0.9216 0.9018) demonstrated superiority our over previous models. Conclusions: We anticipate not only serve as an effective tool for predicting but be employed universal computational framework inferring relationships across entities.

Language: Английский

Citations

1

Predicting miRNA-disease association via graph attention learning and multiplex adaptive modality fusion DOI
Z M Jin, Minhui Wang, Chang Tang

et al.

Computers in Biology and Medicine, Journal Year: 2023, Volume and Issue: 169, P. 107904 - 107904

Published: Dec. 28, 2023

Language: Английский

Citations

13

Establishing a GRU-GCN coordination-based prediction model for miRNA-disease associations DOI Creative Commons
Kai-Cheng Chuang,

Ping-Sung Cheng,

Yu-Hung Tsai

et al.

BMC Genomic Data, Journal Year: 2025, Volume and Issue: 26(1)

Published: Jan. 14, 2025

miRNAs (microRNAs) are endogenous RNAs with lengths of 18 to 24 nucleotides and play critical roles in gene regulation disease progression. Although traditional wet-lab experiments provide direct evidence for miRNA-disease associations, they often time-consuming complicated analyze by current bioinformatics tools. In recent years, machine learning (ML) deep (DL) techniques powerful tools large-scale biological data. Hence, developing a model predict, identify, rank connections diseases can significantly enhance the precision efficiency investigating relationships between diseases. this study, we utilized association data obtained biotechnological develop DL associations. To improve accuracy prediction model, introduced two labeling strategies, weight-based majority-based definitions, classify After preprocessing, was trained novel combining gated recurrent units (GRU) graph convolutional network (GCN) predict level The datasets were from HMDD (the Human miRNA Disease Database) categorized distinct approaches, definitions definitions. We classified associations into three groups, "upregulated", "downregulated" "nonspecific", regression analysis multiclass classification. This GRU-GCN coordinated achieved robust area under curve (AUC) score 0.8 all datasets, demonstrating efficacy predicting potential relationships. By introducing innovative label-preprocessing methods, study addressed diseases, improved ambiguity results different experiments. Based on these refined label developed DL-based refine offers valuable tool complementing experimental methods enhancing our understanding miRNA-related mechanisms.

Language: Английский

Citations

0

MGATAF: multi-channel graph attention network with adaptive fusion for cancer-drug response prediction DOI Creative Commons

Dhekra Saeed,

Huanlai Xing, Barakat AlBadani

et al.

BMC Bioinformatics, Journal Year: 2025, Volume and Issue: 26(1)

Published: Jan. 17, 2025

Drug response prediction is critical in precision medicine to determine the most effective and safe treatments for individual patients. Traditional methods relying on demographic genetic data often fall short accuracy robustness. Recent graph-based models, while promising, frequently neglect role of atomic interactions fail integrate drug fingerprints with SMILES comprehensive molecular graph construction. We introduce multimodal multi-channel attention network adaptive fusion (MGATAF), a framework designed enhance predictions by capturing both local global among nodes. MGATAF improves representation integrating fingerprints, resulting more precise effects. The methodology involves constructing graphs, employing networks capture diverse interactions, using these at multiple abstraction levels. Empirical results demonstrate MGATAF's superior performance compared traditional other techniques. For example, GDSC dataset, achieved 5.12% improvement Pearson correlation coefficient (PCC), reaching 0.9312 an RMSE 0.0225. Similarly, new cell-line tests, outperformed baselines PCC 0.8536 0.0321 0.7364 0.0531 CCLE dataset. significantly advances effectively types complex interactions. This enhances offers robust tool personalized medicine, potentially leading safer Future research can expand this work exploring additional modalities refining mechanisms.

Language: Английский

Citations

0

NADG-GAM: Neighbor aggregation-based neurological disease-gene identification via optimal generative adjacency matrix DOI
Mengyuan Jin,

Ziyi Deng,

Yin Zhang

et al.

Applied Soft Computing, Journal Year: 2025, Volume and Issue: unknown, P. 112756 - 112756

Published: Jan. 1, 2025

Language: Английский

Citations

0

lncRNA-disease association prediction based on optimizing measures of multi-graph regularized matrix factorization DOI
Bin Yao, Yunzhong Song

Computer Methods in Biomechanics & Biomedical Engineering, Journal Year: 2025, Volume and Issue: unknown, P. 1 - 16

Published: March 20, 2025

In this paper, we propose a novel lncRNA-disease association prediction algorithm based on optimizing measures of multi-graph regularized matrix factorization (OM-MGRMF). The method first calculates the semantic similarity diseases, functional lncRNAs, and Gaussian both. It then constructs new by using K-nearest-neighbor (KNN) algorithm. Finally, objective function is constructed through utilization ranking regularization constraints. This iteratively optimized an adaptive gradient descent experimental results OM-MGRMF outperform those classical methods in both K-fold cross-validation.

Language: Английский

Citations

0