Paper List
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Macroscopic Dominance from Microscopic Extremes: Symmetry Breaking in Spatial Competition
This paper addresses the fundamental question of how microscopic stochastic advantages in spatial exploration translate into macroscopic resource domi...
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Linear Readout of Neural Manifolds with Continuous Variables
This paper addresses the core challenge of quantifying how the geometric structure of high-dimensional neural population activity (neural manifolds) d...
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Theory of Cell Body Lensing and Phototaxis Sign Reversal in “Eyeless” Mutants of Chlamydomonas
This paper solves the core puzzle of how eyeless mutants of Chlamydomonas exhibit reversed phototaxis by quantitatively modeling the competition betwe...
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Cross-Species Transfer Learning for Electrophysiology-to-Transcriptomics Mapping in Cortical GABAergic Interneurons
This paper addresses the challenge of predicting transcriptomic identity from electrophysiological recordings in human cortical interneurons, where li...
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Uncovering statistical structure in large-scale neural activity with Restricted Boltzmann Machines
This paper addresses the core challenge of modeling large-scale neural population activity (1500-2000 neurons) with interpretable higher-order interac...
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Realizing Common Random Numbers: Event-Keyed Hashing for Causally Valid Stochastic Models
This paper addresses the critical problem that standard stateful PRNG implementations in agent-based models violate causal validity by making random d...
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A Standardized Framework for Evaluating Gene Expression Generative Models
This paper addresses the critical lack of standardized evaluation protocols for single-cell gene expression generative models, where inconsistent metr...
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Single Molecule Localization Microscopy Challenge: A Biologically Inspired Benchmark for Long-Sequence Modeling
This paper addresses the core challenge of evaluating state-space models on biologically realistic, sparse, and stochastic temporal processes, which a...
Hypothesis-Based Particle Detection for Accurate Nanoparticle Counting and Digital Diagnostics
Institute for Digital Molecular Analytics and Science (IDMxS), Nanyang Technological University, Singapore | School of Electrical and Electronic Engineering, Nanyang Technological University, Singapore
30秒速读
IN SHORT: This paper addresses the core challenge of achieving accurate, interpretable, and training-free nanoparticle counting in digital diagnostic assays, which is critical for detecting low-abundance biomarkers with high sensitivity.
核心创新
- Methodology Introduces a multiple-hypothesis statistical testing framework for particle counting, eliminating the need for empirical thresholds or training data common in traditional and ML-based methods.
- Methodology Formulates the detection problem under an explicit image-formation model (Poisson noise, Gaussian PSF) and uses a penalized likelihood rule with an information-criterion complexity penalty for robust hypothesis selection.
- Biology/Application Validates the method on experimental dark-field images of a nanoparticle-based assay for SARS-CoV-2 DNA biomarkers, demonstrating statistically significant differentiation between control and positive samples and providing insights into particle aggregation.
主要结论
- The algorithm demonstrates robust count accuracy in simulations across challenging conditions: weak signals (low SBR), variable backgrounds, magnification changes, and moderate PSF mismatch.
- Applied to experimental SARS-CoV-2 biomarker detection, the method revealed statistically significant differences in particle count distributions between control and positive samples, confirming practical utility.
- Full count statistics from the experimental assay exhibited consistent over-dispersion, providing quantitative insight into non-specific and target-induced nanoparticle aggregation phenomena.
摘要: Digital assays represent a shift from traditional diagnostics and enable the precise detection of low-abundance analytes, critical for early disease diagnosis and personalized medicine, through discrete counting of biomolecular reporters. Within this paradigm, we present a particle counting algorithm for nanoparticle based imaging assays, formulated as a multiple-hypothesis statistical test under an explicit image-formation model and evaluated using a penalized likelihood rule. In contrast to thresholding or machine learning methods, this approach requires no training data or empirical parameter tuning, and its outputs remain interpretable through direct links to imaging physics and statistical decision theory. Through numerical simulations we demonstrate robust count accuracy across weak signals, variable backgrounds, magnification changes and moderate PSF mismatch. Particle resolvability tests further reveal characteristic error modes, including under-counting at very small separations and localized over-counting near the resolution limit. Practically, we also confirm the algorithm’s utility, through application to experimental dark-field images comprising a nanoparticle-based assay for detection of DNA biomarkers derived from SARS-CoV-2. Statistically significant differences in particle count distributions are observed between control and positive samples. Full count statistics obtained further exhibit consistent over-dispersion, and provide insight into non-specific and target-induced particle aggregation. These results establish our method as a reliable framework for nanoparticle-based detection assays in digital molecular diagnostics.