A personalized network framework reveals predictive axis of anti-TNF response across diseases

个性化网络框架揭示了跨疾病的抗TNF反应的预测轴

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作者:Shiran Gerassy-Vainberg ,Elina Starosvetsky ,Renaud Gaujoux ,Alexandra Blatt ,Naama Maimon ,Yuri Gorelik ,Sigal Pressman ,Ayelet Alpert ,Haggai Bar-Yoseph ,Tania Dubovik ,Benny Perets ,Adir Katz ,Neta Milman ,Meital Segev ,Yehuda Chowers ,Shai S Shen-Orr

Abstract

Personalized treatment of complex diseases has been mostly predicated on biomarker identification of one drug-disease combination at a time. Here, we use a computational approach termed Disruption Networks to generate a data type, contextualized by cell-centered individual-level networks, that captures biology otherwise overlooked when performing standard statistics. This data type extends beyond the "feature level space", to the "relations space", by quantifying individual-level breaking or rewiring of cross-feature relations. Applying Disruption Networks to dissect high-dimensional blood data, we discover and validate that the RAC1-PAK1 axis is predictive of anti-TNF response in inflammatory bowel disease. Intermediate monocytes, which correlate with the inflammatory state, play a key role in the RAC1-PAK1 responses, supporting their modulation as a therapeutic target. This axis also predicts response in rheumatoid arthritis, validated in three public cohorts. Our findings support blood-based drug response diagnostics across immune-mediated diseases, implicating common mechanisms of non-response.

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