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Noninvasive diagnostic imaging using machine-learning analysis of nanoresolution images of cell surfaces: Detection of bladder cancer

机译:使用机器学习分析细胞表面纳米分辨率图像的无创诊断成像:膀胱癌的检测

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摘要

We report an approach in diagnostic imaging based on nanoscale-resolution scanning of surfaces of cells collected from body fluids using a recent modality of atomic force microscopy (AFM), subresonance tapping, and machine-leaning analysis. The surface parameters, which are typically used in engineering to describe surfaces, are used to classify cells. The method is applied to the detection of bladder cancer, which is one of the most common human malignancies and the most expensive cancer to treat. The frequent visual examinations of bladder (cytoscopy) required for follow-up are not only uncomfortable for the patient but a serious cost for the health care system. Our method addresses an unmet need in noninvasive and accurate detection of bladder cancer, which may eliminate unnecessary and expensive cystoscopies. The method, which evaluates cells collected from urine, shows 94% diagnostic accuracy when examining five cells per patient’s urine sample. It is a statistically significant improvement (P < 0.05) in diagnostic accuracy compared with the currently used clinical standard, cystoscopy, as verified on 43 control and 25 bladder cancer patients.
机译:我们报告了一种诊断成像的方法,该方法基于使用原子力显微镜(AFM),亚共振攻丝和机器倾斜分析的最新模式从体液中收集的细胞表面的纳米级分辨率扫描。通常在工程中用来描述表面的表面参数用于对单元进行分类。该方法用于检测膀胱癌,这是最常见的人类恶性肿瘤之一,也是治疗费用最高的癌症。随访所需的频繁的膀胱视觉检查(细胞镜检查)不仅使患者不舒服,而且对医疗保健系统造成了沉重的成本。我们的方法解决了非侵入性和准确检测膀胱癌的未满足需求,这可以消除不必要和昂贵的膀胱镜检查。该方法评估了从尿液中收集的细胞,在每个病人的尿液样本中检查五个细胞时,诊断准确性达到94%。与目前使用的临床标准膀胱镜检查相比,该方法在诊断准确性上有统计学上的显着提高(P <0.05),已在43例对照和25例膀胱癌患者中得到证实。

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