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BioMedInformatics

BioMedInformatics is an international, peer-reviewed, open access journal on all areas of biomedical informatics, as well as computational biology and medicine, published quarterly online by MDPI.

All Articles (323)

Background: The growing demand for automated microorganism classification in the context of Laboratory 4.0 highlights the potential of convolutional neural networks (CNNs) for accurate and efficient image analysis. However, their effectiveness remains limited by the scarcity of large, labeled datasets. This study addresses a key gap in the literature by investigating how commonly used image preprocessing techniques, such as lossy compression, non-uniform scaling (typically applied to fit input images to CNN input layers), and data augmentation, affect the performance of CNNs in automated microorganism classification. Methods: Using two well-established CNN architectures, AlexNet and DenseNet-121, both frequently applied in biomedical image analysis, we conducted a series of computational experiments on a standardized dataset of high-resolution bacterial images. Results: Our results demonstrate under which conditions these preprocessing strategies degrade or improve CNN performance. Using the findings from this research to optimize hyperparameters and train the CNNs, we achieved classification accuracies of 98.61% with AlexNet and 99.82% with DenseNet-121, surpassing the performance reported in current state-of-the-art studies. Conclusions: This study advances laboratory digitalization by reducing data preparation effort, training time, and computational costs, while improving the accuracy of microorganism classification with deep learning. Its contributions also benefit broader biomedical fields such as automated diagnostics, digital pathology, clinical decision support, and point-of-care imaging.

31 October 2025

Steps of the proposed approach.

A Study of Gene Expression Levels of Parkinson’s Disease Using Machine Learning

  • Sonia Lilia Mestizo-Gutiérrez,
  • Joan Arturo Jácome-Delgado and
  • Nicandro Cruz-Ramírez
  • + 4 authors

Parkinson’s disease (PD) is the second most common neurodegenerative disorder, characterized primarily by motor impairments due to the loss of dopaminergic neurons. Despite extensive research, the precise causes of PD remain unknown, and reliable non-invasive biomarkers are still lacking. This study aimed to explore gene expression profiles in peripheral blood to identify potential biomarkers for PD using machine learning approaches. We analyzed microarray-based gene expression data from 105 individuals (50 PD patients, 33 with other neurodegenerative diseases, and 22 healthy controls) obtained from the GEO database (GSE6613). Preprocessing was performed using the “affy” package in R with Expresso normalization. Feature selection and classification were conducted using a decision tree approach (C4.5/J48 algorithm in WEKA), and model performance was evaluated with 10-fold cross-validation. Additional classifiers such as Support Vector Machine (SVM), the Naive Bayes classifier and Multilayer Perceptron Neural Network (MLP) were used for comparison. ROC curve analysis and Gene Ontology (GO) enrichment analysis were applied to the selected genes. A nine-gene decision tree model (TMEM104, TRIM33, GJB3, SPON2, SNAP25, TRAK2, SHPK, PIEZO1, RPL37) achieved 86.71% accuracy, 88% sensitivity, and 87% specificity. The model significantly outperformed other classifiers (SVM, Naive Bayes, MLP) in terms of overall predictive accuracy. ROC analysis showed moderate discrimination for some genes (e.g., TRAK2, TRIM33, PIEZO1), and GO enrichment revealed associations with synaptic processes, inflammation, mitochondrial transport, and stress response pathways. Our decision tree model based on blood gene expression profiles effectively discriminates between PD, other neurodegenerative conditions, and healthy controls, offering a non-invasive method for potential early diagnosis. Notably, TMEM104, TRIM33, and SNAP25 emerged as promising candidate biomarkers, warranting further investigation in larger and synthetic datasets to validate their clinical relevance.

29 October 2025

Intensity levels of raw data.

EvoFuzzy: Evolutionary Fuzzy Approach for Ensembling Reconstructed Genetic Networks

  • Hasini Nakulugamuwa Gamage,
  • Jaskaran Gill and
  • Madhu Chetty
  • + 2 authors

Background: Reconstructing gene regulatory networks (GRNs) from gene expression data remains a major challenge in systems biology due to the inherent complexity of biological systems and the limitations of existing reconstruction methods, which often yield high false-positive rates. This study aims to develop a robust and adaptive approach to enhance the accuracy of inferred GRNs by integrating multiple modelling paradigms. Methods: We introduce EvoFuzzy, a novel algorithm that integrates evolutionary computation and fuzzy logic to aggregate GRNs reconstructed using Boolean, regression, and fuzzy modelling techniques. The algorithm initializes an equal number of individuals from each modelling method to form a diverse population, which evolves through fuzzy trigonometric differential evolution. Gene expression values are predicted using a fuzzy logic-based predictor with confidence levels, and a fitness function is applied to identify the optimal consensus network. Results: The proposed method was evaluated using simulated benchmark datasets and a real-world SOS gene repair dataset. Experimental results demonstrated that EvoFuzzy consistently outperformed existing state-of-the-art GRN reconstruction methods in terms of accuracy and robustness. Conclusions: The fuzzy trigonometric differential evolution approach plays a pivotal role in refining and aggregating multiple network outputs into a single, optimal consensus network, making EvoFuzzy a powerful and reliable framework for reconstructing biologically meaningful gene regulatory networks.

20 October 2025

Schematic diagram of the proposed method, EvoFuzzy. EvoFuzzy has two main components: Initial population generation and evolutionary network aggregation. First, gene expression datasets are sampled to generate multiple sub-datasets, which are then input to key inference methods, i.e., Boolean, regression, and fuzzy, to create a population of inferred networks consisting of confidence levels [0, 1] of interactions between genes. An example network (individual) consisting of confidence levels, generated using one of the inference methods is given inside initial population. In the fuzzy trigonometric differential evolution, each generation involves creating a trial vector, representing an individual with confidence levels between gene pairs, after undergoing mutation and crossover operations. The gene expression values for each gene in the trial individual are then predicted using a fuzzy gene expression predictor, which are then used to determine the fitness function. Based on the fitness function, an optimal final network is inferred.

AlphaGlue: A Novel Conceptual Delivery Method for α Therapy

  • Lujin Abu Sabah,
  • Laura Ballisat and
  • Chiara De Sio
  • + 8 authors

Extensive research is being carried out on the application of α particles for cancer treatment. A key challenge in α therapy is how to deliver the α emitters to the tumour. In AlphaGlue, a novel treatment delivery concept, the α emitters are suspended in a thin layer of glue that is put on top of the tumour. In principle, this should be an easy and safe way to apply α therapy. In this study, the effectiveness of AlphaGlue is evaluated using GEANT4 and GEANT4-DNA simulations to calculate the DNA damage as a function of depth. Two radionuclides are considered in this work, 211At and 224Ra. The results indicate that, as a concept, the method offers a promising hypothesis for treating superficial tumours, such as skin cancer, when 224Ra is applied directly on the tissue and stabilized with a glue layer. This results in 2×105 complex double strand breaks and 5×105 double strand breaks at 5 mm depth per applied 224Ra atom. When applying a 224Ra atom concentration of (4.35±0.2)×1011/cm2 corresponding to an activity of Ci/cm2 on the skin surface, the RBE weighted dose exceeds 20 Gy at 5 mm depth. Hence, there is significant cell death at 5 mm into the tissue; a depth matching clinical requirements for skin cancer treatment. Given the rapidly falling weighted dose versus depth curve, the treatment depth can be tuned with good precision. The results of this study show that AlphaGlue is a promosing treatment and open the pathway towards the next stage of the research, which includes in-vitro studies.

13 October 2025

The glue layer loaded with 211At or 224Ra covers healthy tissue above and the tumour below.

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BioMedInformatics - ISSN 2673-7426Creative Common CC BY license