肥胖症的胸部 CT 成像:技术挑战、成像结果和未来展望

Perawish Suwathep , Alexander Sheeka , Susan Copley
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引用次数: 0

摘要

肥胖症是一个非常普遍且日益严重的全球性医学问题。预计大多数放射科医生在日常工作中都会遇到肥胖病人的计算机断层扫描研究。肥胖症对心血管、内分泌和肌肉骨骼系统有多种众所周知的影响。肥胖对肺部造成的多种影响普遍存在,但描述较少;这是通过直接机械和间接代谢机制造成的。这导致了 CT 的特征成像,本综述文章将对此进行说明。解读胸部 CT 的放射医师在评估肥胖患者时应了解这些发现和陷阱,以避免误诊。此外,对肥胖患者进行 CT 扫描以获得诊断图像还面临多种技术挑战。本综述文章介绍了肥胖肺部成像结果的病理机制、最佳扫描的技术注意事项以及典型的成像结果。文章还全面回顾了人工智能体表形态测量的日益广泛应用及其在肺癌风险和预后预测中的应用。我们希望这篇综述能为临床放射医师和对医学影像有特殊兴趣的人员提供有关肥胖症胸部 CT 成像的病理生理学、诊断和技术挑战的全面总结,以及对人工智能未来前景的见解。
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Thoracic CT imaging in obesity: Technical challenges, imaging findings and future outlook

Obesity is a highly prevalent and increasing global medical problem. It is expected that most radiologists will come across computed tomography studies of obese patients in their daily work. Obesity has multiple well known effects on the cardiovascular, endocrine, and musculoskeletal systems. Prevalent, but less well described, are the multiple effects that obesity causes in the lungs; this occurs through both direct mechanical and indirect metabolic mechanisms. These result in characteristic imaging features in CT in which this review article will illustrated. Radiologists who interpret chest CT should be aware of these findings and pitfalls in their assessment of obese patients to avoid misdiagnosis. In addition, there are multiple technical challenges to CT scanning of obese patients to achieve diagnostic images. In this review article the pathological mechanisms underlying the imaging findings in the obese lung are presented, as well as technical considerations for optimal scanning and the typical imaging findings. An overall review of the increasing use of AI body morphometry and its use in lung cancer risk and outcome prediction is also explored. We hope this review can provide clinical radiologists and those who have special interests in medical imaging comprehensive summary of the pathophysiology, diagnostic and technical challenges involved in thoracic CT imaging in obesity, as well as the insights into the future outlook with artificial intelligence.

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