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Large language models completely understand molecular characteristics of squamous cervical cancer

Authors :
Chaoyang Sun
Weizhi Zhang
Funian Lu
Tianyu Qin
Yujie Gou
Ensong Guo
Di Peng
Li Zhang
Bin Yang
Si Liu
Cheng Han
Shanshan Fu
Kun Song
Bairong Xia
Dongling Zou
Yuanming Shen
He Huang
Shengtao Zhou
Cunzhong Yuan
Yao Shu
Yanan Pi
Shuxiang Wang
Wenjuan Chen
Haixia Wang
Lin Zhong
Li Yuan
Baogang Wen
Siqi Yang
Ting Wan
Junpeng Fan
Yu Fu
Dan Liu
Rourou Xiao
Chi Zhang
Yuxiang Wei
Wenju Peng
Xinhe Huang
Beibei Wang
Peng Wu
Beihua Kong
Gordon Mills
Ding Ma
Gang Chen
Yu Xue
Publication Year :
2023
Publisher :
Research Square Platform LLC, 2023.

Abstract

Squamous cervical cancer (SCC) is a major cause of death in women, yet its molecular characteristics are poorly understood. Here, we profiled histopathological and molecular alterations in SCC, and used large language models (LLMs) for interpretation, reasoning, and understanding of multi-modal data. We implemented an immersive-knowledge prompting (iKLP) strategy to trigger LLMs, which interpreted 17.8%-20.3% of omic alterations known to be associated with cancer. Also, the emergence of cross-disciplinary reasoning in LLMs helped for interpreting phenotypic effects of SCC molecular alterations, exemplified by a prognostic biomarker HRG, and targetable kinases, CDK18 and CDK9. With experimental validations, LLM-reasoning showed >2-fold increased confidence for 68.5% of analyzed molecules. Strikingly, LLMs understood the information flow of cell-cell communications, and uncovered a CDK18-mediated immune escaping axis in orchestrating the crosstalk of malignant, immune, and niche cells. We anticipate that LLMs can be used for completely distinguishing between knowns and unknowns in any scientific problems.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........0b55d0b75bebcf7dc48f11e605e88bd2