首页> 外文期刊>The Mount Sinai journal of medicine >Image analysis of small pulmonary nodules identified by computed tomography.
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Image analysis of small pulmonary nodules identified by computed tomography.

机译:通过计算机断层扫描确定的小肺结节的图像分析。

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Detection of small pulmonary nodules has markedly increased as computed tomography (CT) technology has advanced and interpretation evolved from viewing small CT images on film to magnified images on large, high-resolution computer monitors. Despite these advances, determining the etiology of a lung nodule short of major surgery remains problematic. Initial nodule size is a major criterion in evaluating the risk for malignancy, and the majority of CT detected nodules are <10 mm in diameter. Also, the likelihood that the nodule is a lung cancer increases with increasing age and smoking history, and such clinical information needs to be integrated into algorithms that guide the workup of such nodules. Baseline and annual repeat screening results are also very helpful in developing and assessing the usefulness of such algorithms. Based on CT morphology, subtypes of nodules have been identified; today nodules are routinely classified as being solid, part-solid, or nonsolid. It has been shown that part-solid nodules have a higher frequency of being malignant than solid or nonsolid ones. Other nodule characteristics such as spiculation are useful, although granulomas and fibrosis also have such features, so these characteristics have not been as useful as nodule-growth assessment. Depending on the aggressiveness of the lung cancer and the size of the nodule when it is initially seen, a follow-up CT scan 1-3 months after the first CT scan can identify those nodules with growth at a malignant rate. Software has been developed by all CT scanner manufacturers for such growth assessment, but the inherent variability of such assessments needs further development. Nodule-growth assessment based on 2-dimensional approaches is limited; therefore, software has been developed for the 3-dimensional assessment of growth. Different approaches for such growth assessment have been developed, either using automated computer segmentation techniques or hybrid methods that allow the radiologist to adjust such segmentation. There are, however, inherent reasons for variability in such measurements that need to be carefully considered, and this, together with continued technologic advances and integration of the relevant clinical information, will allow for individualization of the algorithms for the workup of small pulmonary nodules.
机译:随着计算机断层扫描(CT)技术的发展,对小肺结节的检测已显着增加,并且解释从在胶片上查看小的CT图像演变为在高分辨率的大型计算机监视器上放大的图像。尽管取得了这些进展,但是在没有进行大手术的情况下确定肺结节的病因仍然存在问题。最初的结节大小是评估恶性肿瘤风险的主要标准,大多数CT检测到的结节直径<10 mm。而且,结节是肺癌的可能性随着年龄和吸烟史的增加而增加,并且此类临床信息需要集成到指导此类结节检查的算法中。基线和年度重复筛选结果对开发和评估此类算法的有效性也非常有帮助。根据CT形态,已经鉴定出结节的亚型。今天,结节通常被分类为固体,半固体或非固体。已经显示,部分实性结节的恶性频率高于实性或非实性结节。尽管肉芽肿和纤维化也具有这样的特征,但其他结节特征(例如针刺)也是有用的,因此这些特征还没有结节生长评估有用。根据最初看到的肺癌的侵袭性和结节的大小,在第一次CT扫描后1-3个月进行一次CT扫描可以识别出那些恶性生长的结节。所有CT扫描仪制造商都已经开发了用于此类生长评估的软件,但是此类评估的固有可变性需要进一步开发。基于二维方法的结节生长评估有限;因此,已经开发了用于3维增长评估的软件。已经开发了用于这种生长评估的不同方法,或者使用自动计算机分割技术或者允许放射线医师调整这种分割的混合方法。但是,存在需要仔细考虑此类测量结果可变性的内在原因,这与持续的技术进步和相关临床信息的整合一起,将有助于对小肺结节进行检查的算法个性化。

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