高风险不确定肺结节评估和管理专家共识

Yang Dawei , Stephan Lam , Kai Wang , Zhou Jian , Zhang Xiaoju , Wang Qi , Zhou Chengzhi , Zhang Lichuan , Bai Li , Wang Yuehong , Li Ming , Sun Jiayuan , Li Yang , Fengming Kong , Haiquan Chen , Ming Fan , Xuan Jianwei , Fred R. Hirsch , Charles A. Powell , Bai Chunxue
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引用次数: 0

摘要

背景 改善肺癌预后的最有效方法是在高危人群中应用低剂量计算机断层扫描(LDCT)进行肺结节筛查。早期肺癌的及时诊断和治疗有助于提高长期生存率。然而,要区分 8-15 毫米大小的恶性和良性肺结节,一方面要避免过度治疗,另一方面又要避免延误诊断,这仍然是一个难题。在这篇共识论文中,我们旨在明确 "高风险不确定肺结节(IPNs)"的定义,并讨论适当的评估和管理,以促进肺癌的及时诊断,从而改善肺癌的预后。我们邀请了来自亚洲、加拿大和美国的多学科医生和 IT 专家参加。在达成共识的过程中,使用了已发表的证据和共识指南。结果专家们认为,肺结节的发病率非常高,而且由于结节较小,很难诊断出早期肺癌,这往往会导致延误诊断或过度治疗。为解决这一问题并改善长期预后,专家小组认为修订高危 IPN 的分类非常重要,(1) 高危 IPN 是指无法通过非手术活检程序明确诊断,但高度怀疑为早期肺癌的肺部结节。专家小组还建议,考虑到新技术,最有责任心的人应安排影像学评估和随访。基于医疗物联网(MIoT)的人工智能(AI)评估可与专家意见相结合,组成人机多学科团队(MDT),全面实现医疗物联网的三大核心程序,即全面感知、可靠传输和智能处理。这将有助于把不规范的诊疗,即所谓的 "手工作坊模式",升级为符合国际标准的现代化流水线模式。MIoT技术具有实现 "复杂问题简单化、简单问题数字化、数字化问题程序化、程序化问题系统化 "的潜力,可通过提高早期肺癌检测的灵敏度和特异性,促进肺结节的同质化评估,避免延误诊断和过度治疗。当前技术、人工智能和人机 MDT 的应用将促进结节评估的改进,将当前类似于手工作坊式生产的诊断和治疗模式转变为符合国际标准的现代化流水线模式,并最终带来更好的预后。
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Expert consensus on the evaluation and management of high-risk indeterminate pulmonary nodules

Background

The most effective method for improving the prognosis of lung cancer is the application of low-dose computed tomography (LDCT) for pulmonary nodule screening in populations at high risk. Timely diagnosis and treatment of early-stage lung cancer can contribute to higher long-term survival rates. However, it remains difficult to differentiate malignant from benign pulmonary nodules measuring 8–15 mm, and avoid overtreatment on the one hand and delayed diagnosis on the other hand. In this consensus paper, we aimed to clarify the definition of “high-risk indeterminate pulmonary nodules (IPNs)” and discuss appropriate evaluation and management to facilitate timely diagnosis of lung cancer to improve lung cancer outcome. Direction for future research was discussed.

Methods

A multi-disciplinary panel of doctors and IT experts from Asia, Canada and the U.S. were invited to participate. Published evidence and consensus guidelines were used to develop this consensus was clarified. Their evaluation and management were discussed.

Findings

The experts believed that the prevalence of pulmonary nodules was very high, and it that was difficult to diagnose early-stage lung cancer due to the small size of the nodules, often leading to delayed diagnosis or overtreatment. To address this issue and to improve long-term outcome, the panel considered important to revise the classification of high-risk IPNs, (1) as pulmonary nodules that cannot be clearly diagnosed with non-surgical biopsy procedures, but is highly suspicious for early-stage lung cancer. The panel also recommends the most responsible should arrange imaging evaluations and follow-ups, taking new technologies into account. Artificial intelligence (AI) assessment based on the Medical Internet of Things (MIoT) can be combined with expert opinion to form a human–computer multidisciplinary team (MDT) that can fully implement the three core procedures of the MIoT, namely, comprehensive perception, reliable transmission, and intelligent processing. This will help to upgrade the non-standard diagnosis and treatment, the so-called “handicraft workshop model”, to a modern assembly-line model that meets international standards. The MIoT technology, which has the potential to realize “simplification of complex problems, digitalization of simple problems, programming of digital problems, and systematization of programming problems”, can promote the homogeneous evaluation of pulmonary nodules by enhancing both the sensitivity and the specificity of detecting early-stage lung cancer, in order to avoid delayed diagnosis and overtreatment.

Conclusion

To optimize the evaluation of early-stage lung cancer, and to avoid delayed diagnosis and overtreatment, it is necessary to propose and promote the concept of “high-risk IPNs”. The application of current technologies, AI, and a human–computer MDT, will facilitate improvement in nodule evaluation, transforming the current diagnosis and treatment model, which is akin to production in handicraft workshops, into a modern assembly-line model that meets international standards, and will ultimately result in better prognosis.

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