Wen Miaomiao, Zheng Qian, Ji Xiaohong, Xin Shaowei, Zhou Yinxi, Tian Yahui, Wan Zitong, Zhang Jiao, Yang Jie, Ma Yongfu, Xiong Yanlu
Department of Thoracic Surgery, Tangdu Hospital, Fourth Military Medical University, Xi'an, China.
Department of Thoracic Surgery, The First Medical Center, Chinese PLA General Hospital, Beijing, China.
J Thorac Dis. 2024 Nov 30;16(11):7999-8013. doi: 10.21037/jtd-24-1058. Epub 2024 Nov 29.
Pulmonary nodules (PNs) are small (≤3 cm) radiographic opacities within lung parenchyma. The use of low-dose computed tomography (LDCT) has led to a significant increase in the identification of solitary nodules. Malignant lung nodules comprise only 5% of all nodules, with management differing greatly from benign cases. Despite diagnostic advancements, there is heterogeneity in prognosis, which can result in undertreatment of high-risk patients and inappropriate treatment for low-risk patients. Therefore, accurately distinguishing benign from malignant nodules and effectively stratifying the risk of malignant nodules is a pressing clinical challenge requiring urgent resolution. The main objectives of this review were to explore the research progress in the clinical management of malignant PNs, including early detection, individualized treatment, and prognosis prediction, in order to shed light on precision medicine for patients with PNs.
The review examined various approaches for the identification and prognosis prediction of early lung cancer characterized by lung nodules, including the use of classical clinicopathological features, liquid biopsy, and artificial intelligence.
The detection rate of early lung cancer characterized by lung nodules is increasing annually, and accurate identification and prognosis prediction are critical for appropriate therapeutic strategies and precise postoperative management. Classical clinicopathological features, such as demographic and radiological features, play an important role in the diagnosis and prognosis assessment of early lung cancer, but liquid biopsy and artificial intelligence are also promising due to their obvious convenience and accuracy.
The review highlights the importance of precision medicine in the clinical management of malignant lung nodules. The use of classical clinicopathological features, liquid biopsy, and artificial intelligence can contribute to the early detection, individualized treatment, and accurate prognosis prediction for patients with lung nodules, ultimately improving their clinical outcomes.
肺结节(PNs)是肺实质内的小(≤3 cm)影像学不透明区。低剂量计算机断层扫描(LDCT)的应用使孤立性结节的检出率显著增加。恶性肺结节仅占所有结节的5%,其管理与良性病例有很大差异。尽管诊断技术有所进步,但预后存在异质性,这可能导致高危患者治疗不足和低危患者治疗不当。因此,准确区分良性与恶性结节并有效分层恶性结节的风险是亟待解决的紧迫临床挑战。本综述的主要目的是探讨恶性肺结节临床管理方面的研究进展,包括早期检测、个体化治疗和预后预测, 以便为肺结节患者的精准医疗提供思路。
本综述研究了多种以肺结节为特征的早期肺癌的识别和预后预测方法,包括使用经典的临床病理特征、液体活检和人工智能。
以肺结节为特征的早期肺癌的检出率逐年上升,准确识别和预后预测对于制定合适的治疗策略和精确的术后管理至关重要。经典的临床病理特征,如人口统计学和放射学特征,在早期肺癌的诊断和预后评估中发挥着重要作用,但液体活检和人工智能因其明显的便利性和准确性也很有前景。
本综述强调了精准医疗在恶性肺结节临床管理中的重要性。使用经典的临床病理特征、液体活检和人工智能有助于对肺结节患者进行早期检测、个体化治疗和准确的预后预测,最终改善他们的临床结局。