Paper List
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Exactly Solvable Population Model with Square-Root Growth Noise and Cell-Size Regulation
This paper addresses the fundamental gap in understanding how microscopic growth fluctuations, specifically those with size-dependent (square-root) no...
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Assessment of Simulation-based Inference Methods for Stochastic Compartmental Models
This paper addresses the core challenge of performing accurate Bayesian parameter inference for stochastic epidemic models when the likelihood functio...
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Realistic Transition Paths for Large Biomolecular Systems: A Langevin Bridge Approach
This paper addresses the core challenge of generating physically realistic and computationally efficient transition paths between distinct protein con...
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MoRSAIK: Sequence Motif Reactor Simulation, Analysis and Inference Kit in Python
This work addresses the computational bottleneck in simulating prebiotic RNA reactor dynamics by developing a Python package that tracks sequence moti...
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The BEAT-CF Causal Model: A model for guiding the design of trials and observational analyses of cystic fibrosis exacerbations
This paper addresses the critical gap in cystic fibrosis exacerbation management by providing a formal causal framework that integrates expert knowled...
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A Theoretical Framework for the Formation of Large Animal Groups: Topological Coordination, Subgroup Merging, and Velocity Inheritance
This paper addresses the core problem of how large, coordinated animal groups form in nature, challenging the classical view of gradual aggregation by...
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ANNE Apnea Paper
This paper addresses the core challenge of achieving accurate, event-level sleep apnea detection and characterization using a non-intrusive, multimoda...
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DeeDeeExperiment: Building an infrastructure for integrating and managing omics data analysis results in R/Bioconductor
This paper addresses the critical bottleneck of managing and organizing the growing volume of differential expression and functional enrichment analys...
Physics-Guided Surrogate Modeling for Machine Learning–Driven DLD Design Optimization
Department of Mechanical Engineering, Lehigh University | Computational Engineering Department, Lawrence Livermore National Laboratory | Department of Industrial and Production Engineering, Bangladesh University of Engineering and Technology | Precision Medicine Translational Research Center, West China Hospital, Sichuan University
The 30-Second View
IN SHORT: This paper addresses the core bottleneck of translating microfluidic DLD devices from research prototypes to clinical applications by replacing weeks-long empirical design cycles with a physics-guided machine learning framework that delivers fabrication-ready specifications in under 60 seconds.
Innovation (TL;DR)
- Methodology First complete inverse design framework for DLD that transforms measured cellular deformability into optimized device geometry through physics-guided machine learning.
- Methodology Integration of high-fidelity Lattice-Boltzmann/Immersed-Boundary simulations with XGBoost surrogate models achieving sub-degree predictive accuracy (R²=0.9999, MSE=2×10⁻⁴).
- Methodology Statistical quantification of deformability-geometry interactions via Type II ANOVA revealing significant interaction effects (F=48.23, p<10⁻³⁴) despite geometric dominance of main effects.
Key conclusions
- Geometric parameters dominate migration angle variance (F=63.72, p<10⁻³⁷), but cellular deformability exerts statistically significant effects through interactions with device geometry (F=48.23, p<10⁻³⁴).
- The XGBoost surrogate model achieves exceptional predictive accuracy (R²=0.9999, MSE=2×10⁻⁴), enabling sub-degree migration angle prediction across the design space.
- Bayesian optimization via tree-structured Parzen estimation identifies optimal DLD architectures in under 60 seconds, reducing design iteration from weeks of experimental prototyping to minutes of automated computation.
Abstract: Microfluidic separation technologies have transformed label-free cell sorting by exploiting intrinsic biophysical properties, yet the translation of these platforms from laboratory prototypes to clinical applications remains constrained by the empirical, trial-and-error nature of device design. Deterministic Lateral Displacement (DLD) represents a paradigmatic example: while demonstrating robust discrimination of cells by size, shape, and deformability across diverse applications including circulating tumor cell isolation and malaria diagnostics, DLD performance exhibits extreme sensitivity to the coupled interplay between cellular mechanical phenotype and micron-scale geometric parameters, necessitating iterative fabrication-testing cycles that span weeks to months. We present the first complete inverse design framework that transforms measured cellular deformability into fabrication-ready DLD specifications through physics-guided machine learning. Our approach integrates high-fidelity lattice-Boltzmann and immersed-boundary simulations with gradient-boosted surrogate models to systematically map cellular mechanical properties to migration behavior across manufacturing-feasible geometric configurations (pillar radius, gap, periodicity). Type II ANOVA quantifies the relative influence of these parameters, revealing that while geometric factors dominate migration angle variance (F=63.72, p<10−37), cellular deformability exerts statistically significant effects through interactions with device geometry (F=48.23, p<10−34). The resulting XGBoost surrogate achieves sub-degree predictive accuracy (R2=0.9999, MSE =2×10−4), enabling Bayesian optimization via tree-structured Parzen estimation to identify optimal array architectures in under 60 seconds—reducing design iteration from weeks of experimental prototyping to minutes of automated computation. By deploying this validated pipeline as an accessible web application that accepts experimentally measured deformation indices and returns optimized device specifications with tolerance analysis, we democratize DLD design for researchers without specialized computational expertise, thereby accelerating the translation of microfluidic technologies from research-grade prototypes to application-specific, clinically deployable devices.