肺癌
蛋白酵素
医学
克拉斯
纳米传感器
肺
癌症研究
腺癌
癌症
内科学
病理
生物
结直肠癌
酶
材料科学
纳米技术
生物化学
作者
Jesse D. Kirkpatrick,Andrew Warren,Ava P. Soleimany,Peter M.K. Westcott,Justin C. Voog,Carmen Martin-Alonso,Heather E. Fleming,Tuomas Tammela,Tyler Jacks,Sangeeta N. Bhatia
标识
DOI:10.1126/scitranslmed.aaw0262
摘要
Lung cancer is the leading cause of cancer-related death, and patients most commonly present with incurable advanced-stage disease. U.S. national guidelines recommend screening for high-risk patients with low-dose computed tomography, but this approach has limitations including high false-positive rates. Activity-based nanosensors can detect dysregulated proteases in vivo and release a reporter to provide a urinary readout of disease activity. Here, we demonstrate the translational potential of activity-based nanosensors for lung cancer by coupling nanosensor multiplexing with intrapulmonary delivery and machine learning to detect localized disease in two immunocompetent genetically engineered mouse models. The design of our multiplexed panel of sensors was informed by comparative transcriptomic analysis of human and mouse lung adenocarcinoma datasets and in vitro cleavage assays with recombinant candidate proteases. Intrapulmonary administration of the nanosensors to a Kras- and Trp53-mutant lung adenocarcinoma mouse model confirmed the role of metalloproteases in lung cancer and enabled accurate detection of localized disease, with 100% specificity and 81% sensitivity. Furthermore, this approach generalized to an alternative autochthonous model of lung adenocarcinoma, where it detected cancer with 100% specificity and 95% sensitivity and was not confounded by lipopolysaccharide-driven lung inflammation. These results encourage the clinical development of activity-based nanosensors for the detection of lung cancer.
科研通智能强力驱动
Strongly Powered by AbleSci AI