Clinical and translational mode of single-cell measurements: An artificial intelligent single-cell

IF 7.9 1区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
Xiangdong Wang, Charles A. Powell, Qin Ma, Jia Fan
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Abstract

With rapid development and mature of single-cell measurements, single-cell biology and pathology become an emerging discipline to understand the disease. However, it is important to address concerns raised by clinicians as to how to apply single-cell measurements for clinical practice, translate the signals of single-cell systems biology into determination of clinical phenotype, and predict patient response to therapies. The present Perspective proposes a new system coined as the clinical artificial intelligent single-cell (caiSC) with the dynamic generator of clinical single-cell informatics, artificial intelligent analyzers, molecular multimodal reference boxes, clinical inputs and outs, and AI-based computerization. This system provides reliable and rapid information for impacting clinical diagnoses, monitoring, and prediction of the disease at the single-cell level. The caiSC represents an important step and milestone to translate the single-cell measurement into clinical application, assist clinicians’ decision-making, and improve the quality of medical services. There is increasing evidence to support the possibility of the caiSC proposal, since the corresponding biotechnologies associated with caiSCs are rapidly developed. Therefore, we call the special attention and efforts from various scientists and clinicians on the caiSCs and believe that the appearance of the caiSCs can shed light on the future of clinical molecular medicine.

Abstract Image

单细胞测量的临床和转化模式:人工智能单细胞
随着单细胞测量技术的迅速发展和成熟,单细胞生物学和病理学已成为一门了解疾病的新兴学科。然而,如何将单细胞测量应用于临床实践,将单细胞系统生物学信号转化为临床表型的判断,以及预测病人对疗法的反应,是临床医生所关心的问题。本视角提出了一种新的系统,被称为临床人工智能单细胞(caiSC),它由临床单细胞信息学、人工智能分析仪、分子多模态参考盒、临床输入和输出以及基于人工智能的计算机化动态生成器组成。该系统可提供可靠、快速的信息,在单细胞水平上影响临床诊断、监测和预测疾病。caiSC 是将单细胞测量转化为临床应用、辅助临床医生决策和提高医疗服务质量的重要步骤和里程碑。由于与 caiSCs 相关的生物技术发展迅速,越来越多的证据支持 caiSC 提议的可能性。因此,我们呼吁各位科学家和临床医生对 caiSCs 给予特别的关注和努力,并相信 caiSCs 的出现能为临床分子医学的未来带来曙光。
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来源期刊
CiteScore
15.90
自引率
1.90%
发文量
450
审稿时长
4 weeks
期刊介绍: Clinical and Translational Medicine (CTM) is an international, peer-reviewed, open-access journal dedicated to accelerating the translation of preclinical research into clinical applications and fostering communication between basic and clinical scientists. It highlights the clinical potential and application of various fields including biotechnologies, biomaterials, bioengineering, biomarkers, molecular medicine, omics science, bioinformatics, immunology, molecular imaging, drug discovery, regulation, and health policy. With a focus on the bench-to-bedside approach, CTM prioritizes studies and clinical observations that generate hypotheses relevant to patients and diseases, guiding investigations in cellular and molecular medicine. The journal encourages submissions from clinicians, researchers, policymakers, and industry professionals.
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