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Motivation: From a systematic perspective, it is crucial to infer and analyze gene regulatory network (GRN) from high-throughput single-cell RNA sequencing data. However, most existing GRN inference methods mainly focus on the network topology, only few of them consider how to explicitly describe the updated logic rules of regulation in GRNs to obtain their dynamics. Moreover, some inference methods also fail to deal with the over-fitting problem caused by the noise in time series data.
Results: In this article, we propose a novel embedded Boolean threshold network method called LogBTF, which effectively infers GRN by integrating regularized logistic regression and Boolean threshold function. First, the continuous gene expression values are converted into Boolean values and the elastic net regression model is adopted to fit the binarized time series data. Then, the estimated regression coefficients are applied to represent the unknown Boolean threshold function of the candidate Boolean threshold network as the dynamical equations. To overcome the multi-collinearity and over-fitting problems, a new and effective approach is designed to optimize the network topology by adding a perturbation design matrix to the input data and thereafter setting sufficiently small elements of the output coefficient vector to zeros. In addition, the cross-validation procedure is implemented into the Boolean threshold network model framework to strengthen the inference capability. Finally, extensive experiments on one simulated Boolean value dataset, dozens of simulation datasets, and three real single-cell RNA sequencing datasets demonstrate that the LogBTF method can infer GRNs from time series data more accurately than some other alternative methods for GRN inference.
Availability And Implementation: The source data and code are available at https://github.com/zpliulab/LogBTF.
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http://dx.doi.org/10.1093/bioinformatics/btad256 | DOI Listing |
PLoS One
September 2025
Information Technologies and Programming Faculty, ITMO University, Saint Petersburg, Russia.
In the paper we consider the well-known Influence Maximization (IM) and Target Set Selection (TSS) problems for Boolean networks under Deterministic Linear Threshold Model (DLTM). The main novelty of our paper is that we state these problems in the context of pseudo-Boolean optimization and solve them using evolutionary algorithms in combination with the known greedy heuristic. We also propose a new variant of (1 + 1)-Evolutionary Algorithm, which is designed to optimize a fitness function on the subset of the Boolean hypercube comprised of vectors of a fixed Hamming weight.
View Article and Find Full Text PDFLangmuir
September 2025
Unconventional Computing Laboratory, University of the West of England, Bristol BS16 1QY, U.K.
This study examines how proteinoids and myelin interact in biomimetic neural systems. These interactions reveal electrochemical properties and computing capabilities. Proteinoids are made when amino acids heat up and bond together.
View Article and Find Full Text PDFBiosystems
August 2025
Escuela de Ingeniería, Facultad de Ciencias, Ingeniería y Tecnología, Universidad Mayor, Santiago, Chile. Electronic address:
Threshold Boolean networks are widely used to model gene regulatory systems and social dynamics such as consensus formation. In these networks, each node takes a binary value (0 or 1), leading to an exponential growth in the number of possible configurations with the number of nodes (2). Inferring such networks involves learning a weight matrix and threshold vector from configuration data.
View Article and Find Full Text PDFAdv Mater
August 2025
State Key Laboratory for Manufacturing Systems Engineering, Electronic Materials Research Laboratory, Key Laboratory of the Ministry of Education, School of Electronic Science and Engineering, Xi'an Jiaotong University, Xi'an, 710049, China.
Analogous to the manipulation of electrons in field-effect transistors, achieving the voltage-controlled spin-orbit torque and spin current will become indispensable to next-generation spintronic devices, enabling nonvolatile cache memory, spin logic, and other advanced functionalities. Recently, considerable progress has been realized in the electric field control of spin-orbit torques. Due to the limitations of integration and operating voltage, the practical use of voltage-controlled MRAM is still challenging.
View Article and Find Full Text PDFJ Colloid Interface Sci
August 2025
Dept. de Física de la Terra i Termodinàmica, Universitat de València, E-46100 Burjassot, Spain. Electronic address:
Negative differential resistance (NDR) phenomena are characterized by a decrease in the electrical current caused by an increase in the applied voltage beyond a threshold value. They are of fundamental interest for nanofluidic sensing and actuating because small changes around the threshold voltage can be amplified under NDR conditions. We have considered here precipitation-induced NDR effects in nanopores bathed in aqueous electrolyte solutions.
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