Paper List
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Evolutionarily Stable Stackelberg Equilibrium
通过要求追随者策略对突变入侵具有鲁棒性,弥合了斯塔克尔伯格领导力模型与演化稳定性之间的鸿沟。
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Recovering Sparse Neural Connectivity from Partial Measurements: A Covariance-Based Approach with Granger-Causality Refinement
通过跨多个实验会话累积协方差统计,实现从部分记录到完整神经连接性的重建。
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Atomic Trajectory Modeling with State Space Models for Biomolecular Dynamics
ATMOS通过提供一个基于SSM的高效框架,用于生物分子的原子级轨迹生成,弥合了计算昂贵的MD模拟与时间受限的深度生成模型之间的差距。
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Slow evolution towards generalism in a model of variable dietary range
通过证明是种群统计噪声(而非确定性动力学)驱动了模式形成和泛化食性的演化,解决了间接竞争下物种形成的悖论。
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Grounded Multimodal Retrieval-Augmented Drafting of Radiology Impressions Using Case-Based Similarity Search
通过将印象草稿基于检索到的历史病例,并采用明确引用和基于置信度的拒绝机制,解决放射学报告生成中的幻觉问题。
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Unified Policy–Value Decomposition for Rapid Adaptation
通过双线性分解在策略和价值函数之间共享低维目标嵌入,实现对新颖任务的零样本适应。
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Mathematical Modeling of Cancer–Bacterial Therapy: Analysis and Numerical Simulation via Physics-Informed Neural Networks
提供了一个严格的、无网格的PINN框架,用于模拟和分析细菌癌症疗法中复杂的、空间异质的相互作用。
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Sample-Efficient Adaptation of Drug-Response Models to Patient Tumors under Strong Biological Domain Shift
通过从无标记分子谱中学习可迁移表征,利用最少的临床数据实现患者药物反应的有效预测。
A Unified Variational Principle for Branching Transport Networks: Wave Impedance, Viscous Flow, and Tissue Metabolism
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30秒速读
IN SHORT: This paper solves the core problem of predicting the empirically observed branching exponent (α≈2.7) in mammalian arterial trees, which neither Murray's cubic law (α=3) nor pure impedance matching (α≈2) can explain in isolation.
核心创新
- Methodology Introduces a unified network-level Lagrangian that combines dimensionless wave-reflection and metabolic transport penalties, eliminating the need for a free weighting parameter.
- Theory Formulates the morphological optimization as a zero-sum game and applies von Neumann's minimax theorem to derive a unique saddle point (α*, η*) from an equal-cost condition.
- Biology Derives binary branching (N=2) as a dynamic topological optimum that maximizes the network stiffness ratio κ_eff, rather than assuming it as an anatomical constraint.
主要结论
- The empirical branching exponent α_exp=2.70±0.20 emerges as a robust minimax optimum (α*=2.72 for G=11) between competing wave (α_w≈2.115) and transport (α_t∈[2.90,2.94]) attractors.
- The prediction is structurally robust, with sensitivity |Δα*|<0.01 across physiological parameter ranges, and depends critically only on the histological scaling exponent p=0.77.
- Binary branching (N=2) is uniquely selected as it maximizes the emergent network stiffness ratio κ_eff(N), a derived property of the unified framework.
摘要: The branching geometry of biological transport networks is canonically characterized by a diameter scaling exponent α. Traditionally, this exponent interpolates between two structural attractors: impedance matching (α∼2) for pulsatile wave propagation and viscous-metabolic minimization (α=3) for steady flow. We demonstrate that neither mechanism in isolation can predict the empirically observed αexp=2.70±0.20 in mammalian arterial trees. Incorporating the empirical sub-linear vessel-wall scaling h(r)∝r^p (p=0.77) into a three-term metabolic cost function rigorously breaks the universality of Murray’s cubic law — a consequence of cost-function inhomogeneity established via Cauchy’s functional equation — and bounds the static transport optimum to αt∈[2.90,2.94]. To account for the dynamic pulsatile environment, we formulate a unified network-level Lagrangian balancing wave-reflection penalties against steady transport-metabolic costs. Because the operational duty cycle η between pulsatile and steady states is inherently uncertain over developmental timescales, we cast the morphological optimization as a zero-sum game between network architecture and environmental state. By von Neumann’s minimax theorem — for which we provide a direct constructive proof exploiting the strict monotonicity of the cost curves — this game admits a unique saddle point (α∗,η∗) satisfying an exact equal-cost condition, from which the empirical exponent emerges as the robust optimal compromise between competing thermodynamic demands. We further prove that N=2 (binary branching) uniquely maximizes the network stiffness ratio κ_eff(N), establishing the universal preference for bifurcations not as an anatomical assumption but as a derived property of the unified wave-transport framework. Numerical evaluation on the porcine coronary tree (G=11 generations) yields α∗=2.72, in quantitative agreement with morphometric data. Sensitivity analysis confirms that this prediction is structurally robust to metabolic parameter variation (|Δα∗|<0.01 across the physiological range of viscosity and wall metabolic rates), depending critically only on the histological scaling exponent p — the single parameter with direct anatomical grounding. Specifically, the prediction is analytically insensitive to the exact value of the wall-thickness pre-factor c0, making the framework a zero-parameter derivation from fundamental scaling principles.