Angelina Ning

h-index58
2papers

2 Papers

LGDec 24, 2025
Interpretable Perturbation Modeling Through Biomedical Knowledge Graphs

Pascal Passigan, Kevin Zhu, Angelina Ning

Understanding how small molecules perturb gene expression is essential for uncovering drug mechanisms, predicting off-target effects, and identifying repurposing opportunities. While prior deep learning frameworks have integrated multimodal embeddings into biomedical knowledge graphs (BKGs) and further improved these representations through graph neural network message-passing paradigms, these models have been applied to tasks such as link prediction and binary drug-disease association, rather than the task of gene perturbation, which may unveil more about mechanistic transcriptomic effects. To address this gap, we construct a merged biomedical graph that integrates (i) PrimeKG++, an augmentation of PrimeKG containing semantically rich embeddings for nodes with (ii) LINCS L1000 drug and cell line nodes, initialized with multimodal embeddings from foundation models such as MolFormerXL and BioBERT. Using this heterogeneous graph, we train a graph attention network (GAT) with a downstream prediction head that learns the delta expression profile of over 978 landmark genes for a given drug-cell pair. Our results show that our framework outperforms MLP baselines for differentially expressed genes (DEG) -- which predict the delta expression given a concatenated embedding of drug features, target features, and baseline cell expression -- under the scaffold and random splits. Ablation experiments with edge shuffling and node feature randomization further demonstrate that the edges provided by biomedical KGs enhance perturbation-level prediction. More broadly, our framework provides a path toward mechanistic drug modeling: moving beyond binary drug-disease association tasks to granular transcriptional effects of therapeutic intervention.

LGSep 29, 2025
Negative Pre-activations Differentiate Syntax

Linghao Kong, Angelina Ning, Micah Adler et al.

A recently discovered class of entangled neurons, known as Wasserstein neurons, is disproportionately critical in large language models despite constituting only a very small fraction of the network: their targeted removal collapses the model, consistent with their unique role in differentiating similar inputs. Interestingly, in Wasserstein neurons immediately preceding smooth activation functions, such differentiation manifests in the negative pre-activation space, especially in early layers. Pairs of similar inputs are driven to highly distinct negative values, and these pairs involve syntactic tokens such as determiners and prepositions. We show that this negative region is functional rather than simply favorable for optimization. A minimal, sign-specific intervention that zeroes only the negative pre-activations of a small subset of entangled neurons significantly weakens overall model function and disrupts grammatical behavior, while both random and perplexity-matched controls leave grammatical performance largely unchanged. Part of speech analysis localizes the excess surprisal to syntactic scaffolding tokens, and layer-specific interventions reveal that small local degradations accumulate across depth. Over training checkpoints, the same ablation impairs grammatical behavior as Wasserstein neurons emerge and stabilize. Together, these results identify negative differentiation in a sparse subset of entangled neurons as a crucial mechanism that language models rely on for syntax.