PO.CL01.09 · 临床研究

Ultrasensitive AI-driven framework for MRD detection based on multidimensional cfDNA features

海报缩略图:Ultrasensitive AI-driven framework for MRD detection based on multidimensional cfDNA features
编号 3852 展板 13 时间 4/20 02:00–05:00 区域 Section 45 主讲 Haimeng Tang, MS
分会场 Liquid Biopsies: Circulating Nucleic Acids 3
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作者与单位

Yunfei Shi1, Hao Zhang2, Zexiao Lin3, Ningyou Li2, Maolong Wang4, Hua Bao2, Jinfeng Zhang2, Zhili Chang2, Yong Ge5, Peng Li6, Pan Wang7, Liang Huang8, Xiangming Liu9, Lu Han10, Wangming Ji11, Teng Sun9, Dujun Hua2, Xunbiao Liu2, Mingya Wang2, Baihan Zhu2, Dongqin Zhu2, Xue Wu2, Haimeng Tang12, Hao Zhang9, Yang Shao13

1The First Affiliated Hospital of Kunming Medical University, Kunming, China,2Geneseeq Research Institute, Nanjing Geneseeq Technology Inc., Nanjing, China,3Department of Medical Oncology, The Third Affiliated Hospital of Sun Yat-sen University, Guangzhou, China,4Department of Thoracic Surgery, Qingdao University Affiliated Hospital, Qingdao, China,5Department of Thoracic Surgery, Affiliated Hospital of Xuzhou Medical University, Xuzhou, China,6Department of General Surgery, The First Medical Centre, Chinese People’s Liberation Army (PLA) General Hospital, Beijing, China,7Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China,8Beidahuang Group General Hospital, Branch 1, Harbin, China,9Affiliated Hospital of Xuzhou Medical University, Xuzhou, China,10The First Medical Centre, Chinese People’s Liberation Army (PLA) General Hospital, Beijing, China,11PLA Rocket - Force Characteristic Medical Center, Beijing, China,12Geneseeq Technology Inc., Toronto, ON, Canada,13Nanjing Geneseeq Technology Inc., Nanjing, China

摘要 Abstract

Minimal residual disease (MRD) detection is essential for postoperative risk stratification and recurrence prediction in cancer, yet current fixed-panel assays exhibit limited sensitivity and specificity, particularly in tumor-naïve settings. We developed Shielding Ultra, a pan-cancer MRD assay targeting hotspot mutations across 2,365 cancer-related genes. Leveraging ultra-deep unique molecular identifier-based sequencing and AI-driven bioinformatics, the assay integrates somatic mutations, copy number variations (CNVs), and fragmentomic (Frag) features to enable multidimensional MRD assessment within a unified workflow. Analytical validation established a detection limit of 0.0048% and demonstrated 94% sensitivity in late-stage preoperative plasma, with approximately 99% specificity in healthy controls. Tumor-naïve analysis achieved 98.9% concordance with tumor-informed workflows following multimodal integration, supporting applicability when tumor tissue is unavailable. Clinical validation across colorectal, cholangiocarcinoma, and lung cancer cohorts confirmed strong prognostic performance at early postsurgical timepoints while maintaining high specificity. In colorectal cancer, MRD positivity showed a robust association with relapse, yielding hazard ratios up to 32.47 and achieving longitudinal sensitivity of up to 90.9% during postoperative surveillance. In lung cancer, recurrence detection sensitivity was 51.5% at one week after surgery and increased to 72.7% with the addition of one-month postsurgical sampling. Across cancer types, multimodal cfDNA integration strengthened detection performance and enabled reliable identification of MRD across diverse clinical contexts. These findings demonstrate that Shielding Ultra enables sensitive and specific MRD detection through the integration of multidimensional cfDNA features and AI-based algorithms. Its strong prognostic performance across multiple malignancies and compatibility with tumor-naïve workflows support its utility for postoperative risk stratification and personalized disease management.
利益披露 Disclosure
Y. Shi, None.. H. Zhang, None.. Z. Lin, None.. N. Li, None.. M. Wang, None.. H. Bao, None.. J. Zhang, None.. Z. Chang, None.. Y. Ge, None.. P. Li, None.. P. Wang, None.. L. Huang, None.. X. Liu, None.. L. Han, None.. W. Ji, None.. T. Sun, None.. D. Hua, None.. X. Liu, None.. M. Wang, None.. B. Zhu, None.. D. Zhu, None.. X. Wu, None.. H. Tang, None.. H. Zhang, None.

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