pulmonary nodules

肺结节
  • 文章类型: Journal Article
    这项研究调查了纵隔脂肪与肺结节状态之间的关系,旨在开发一种基于深度学习的影像组学模型,用于诊断良性和恶性肺结节。我们提出了一种使用肺结节和胸部周围脂肪(纵隔脂肪)的CT图像的组合模型。来自三个中心的患者被分为培训,验证,内部测试,和外部测试集。来自CT图像的定量影像组学和深度学习特征作为预测因素。使用逻辑回归模型来组合来自肺结节和纵隔脂肪区域的数据,并创建个性化列线图以评估预测性能。包含纵隔脂肪的模型优于仅结节模型,C指数为0.917(训练),0.903(内部测试),0.942(外部测试集1),和0.880(外部测试集2)。纵隔脂肪的加入显著提高了预测性能(NRI=0.243,p<0.05)。决策曲线分析表明,结合纵隔脂肪特征可提供更大的患者益处。纵隔脂肪提供了区分良性和恶性结节的补充信息,增强这种基于深度学习的影像组学模型的诊断能力。该模型对良性和恶性肺结节具有很强的诊断能力,为患者护理提供更准确和有益的方法。
    This study investigated the relationship between mediastinal fat and pulmonary nodule status, aiming to develop a deep learning-based radiomics model for diagnosing benign and malignant pulmonary nodules. We proposed a combined model using CT images of both pulmonary nodules and the fat around the chest (mediastinal fat). Patients from three centers were divided into training, validation, internal testing, and external testing sets. Quantitative radiomics and deep learning features from CT images served as predictive factors. A logistic regression model was used to combine data from both pulmonary nodules and mediastinal adipose regions, and personalized nomograms were created to evaluate the predictive performance. The model incorporating mediastinal fat outperformed the nodule-only model, with C-indexes of 0.917 (training), 0.903 (internal testing), 0.942 (external testing set 1), and 0.880 (external testing set 2). The inclusion of mediastinal fat significantly improved predictive performance (NRI = 0.243, p < 0.05). A decision curve analysis indicated that incorporating mediastinal fat features provided greater patient benefits. Mediastinal fat offered complementary information for distinguishing benign from malignant nodules, enhancing the diagnostic capability of this deep learning-based radiomics model. This model demonstrated strong diagnostic ability for benign and malignant pulmonary nodules, providing a more accurate and beneficial approach for patient care.
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  • 文章类型: Journal Article
    目的:目前尚无证据证明偶发T1期肺癌(LC)的非高危患者的临床特征和预后。本研究的目的是探讨非高危患者偶发T1期LC的临床特征和预后。
    方法:本前瞻性队列研究包括2019年1月1日至2023年12月31日在重庆医科大学附属第一医院病理诊断为T1期LC的患者。所有参与者的随访时间在2024年1月31日或死亡时结束。根据2021年美国预防服务工作组的建议,将所有纳入的患者分为非高危(观察)和高危(对照)组。主要结果是总生存概率和LC特异性生存概率。次要结果是临床特征,包括人口统计学变量,组织学类型和TNM分期。
    结果:我们研究了1876例偶发T1期LC患者。其中,1491例(79.48%)非高危患者纳入观察组,其余385例(20.52%)高危患者组成对照组。所有参与者的随访间隔为0至248个月,中位时间为41.64±23.85个月。观察组患者年龄较小,肿瘤较小,更多的腺癌,和疾病阶段比对照组更早(p≤0.001)。总生存概率(HR=0.23,[95%CI:0.18,0.31],p<0.001)和LC特异性生存概率(HR=0.23,[95%CI:0.17,0.31],p<0.001),观察组患者也均高于对照组。结果似乎在重要亚组之间是一致的。
    结论:在这项研究中,偶发T1期LC的非高危患者年龄较小,有较小的肿瘤,有更多的腺癌,转移的可能性较低,并且比高危患者的生存期更长。
    OBJECTIVE: There is currently no evidence documenting the clinical characteristics and prognosis of non-high-risk patients with incidental stage T1 lung cancer (LC). The aim of this study was to investigate the clinical characteristics and prognosis of non-high-risk patients with incidental stage T1 LC.
    METHODS: This prospective cohort study included patients with incidental stage T1 LC who were diagnosed pathologically at the First Affiliated Hospital of Chongqing Medical University between 1st Jan 2019 and 31st Dec 2023. The follow-up time for all participants concluded on 31st Jan 2024, or upon death. All included patients were divided into non-high-risk (observation) and high-risk (control) groups based on the 2021 US preventative services task force recommendations. The primary outcomes were overall survival probability and LC-specific survival probability. The secondary outcomes were clinical characteristics, including demographic variables, histological types and TNM staging.
    RESULTS: We studied 1876 patients with incidental stage T1 LC. Of these, 1491 (79.48%) non-high-risk patients were included in the observation group, and the remaining 385 (20.52%) high-risk patients composed the control group. The follow-up interval was between 0 and 248 months for all participants, with a median time of 41.64 ± 23.85 months. The patients in the observation group were younger and had smaller tumors, more adenocarcinomas, and earlier disease stages than those in the control group (p ≤ 0.001). The overall survival probability (HR = 0.23, [95% CI: 0.18, 0.31], p < 0.001) and the LC-specific survival probability (HR = 0.23, [95% CI: 0.17, 0.31], p < 0.001) for the patients in the observation group were also both higher than those in the control group. The results appeared to be consistent across important subgroups.
    CONCLUSIONS: In this study, non-high-risk patients with incidental stage T1 LC were younger, had smaller tumors, had more adenocarcinomas, had a lower probability of metastasis, and had longer survival than did high-risk patients.
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  • 文章类型: Journal Article
    为了解决低剂量计算机断层扫描(LDCT)的低依从性和不满意的特异性,在肺癌筛查和治疗中,需要有效和非侵入性的方法来补充其局限性.ASCEND-LUNG研究是一项前瞻性的两阶段病例对照研究,旨在评估基于液体活检的全面肺癌筛查和筛查后肺结节管理系统的性能。
    我们旨在开发一种名为北京大学肺癌筛查和管理系统(PKU-LCSMS)的综合肺癌系统,该系统包括用于识别需要LDCT的特定人群的肺癌筛查模型和用于对LDCT后的肺结节进行分类的人工智能辅助(AI辅助)肺结节诊断模型。465名参与者的数据集(216名癌症,47良性,202个非癌症对照)用于两个模型的发展阶段。对于肺癌筛查模型的开发,癌症参与者以1:1的比例随机分为训练和验证队列,然后非癌症对照与癌症病例的年龄匹配为1:1。同样,对于AI辅助的肺结节模型,癌症和良性参与者也以2:1的比例随机分为训练和验证队列.随后,在模型验证阶段,使用由291名参与者组成的独立验证队列(140名癌症,25良性,126非癌症对照)。前瞻性收集的血液样本进行了多组学分析,包括无细胞DNA(cfDNA)甲基化,突变,和血清蛋白。还获得了计算机断层扫描(CT)图像数据。另外分析配对组织样本的DNA甲基化,DNA突变,和信使RNA(mRNA)的表达,进一步探讨其潜在的生物学机制。这项研究在ClinicalTrials.gov注册,NCT04817046。
    对整个筛选和诊断过程中的基线血液样品进行评价。基于cfDNA甲基化的肺癌筛查模型显示出最高的曲线下面积(AUC)为0.910(95%CI,0.869-0.950),其次是蛋白质模型(0.891[95%CI,0.845-0.938]),最后是突变模型(0.577[95%CI,0.482-0.672])。Further,最终的筛选模型,结合了cfDNA甲基化和蛋白质特征,AUC为0.963(95%CI,0.942-0.984)。在独立验证队列中,多组学筛查模型的敏感性为99.2%(95%CI,0.957-1.000),特异性为56.3%(95%CI,0.472-0.652).对于AI辅助的肺结节诊断模型,结合了cfDNA甲基化和CT图像特征,它的灵敏度为81.1%(95%CI,0.732-0.875),独立验证队列的特异性为76.0%(95%CI,0.549~0.906).此外,肺癌筛查模型和AI辅助肺结节诊断模型共有4个差异甲基化区域(DMRs).
    我们开发并验证了一种基于液体活检的综合肺癌筛查和管理系统,称为PKU-LCSMS,该系统结合了基于血液组学的结合cfDNA甲基化和蛋白质特征的基于血液组学的肺癌筛查模型和AI辅助的肺结节诊断模型,该模型将CT图像和cfDNA甲基化特征依次整合在一起,以简化肺癌筛查和筛查后肺结节管理的整个过程。它可能为肺癌筛查和管理提供一个有前途的适用解决方案。
    这项工作得到了科学支持,科学,雄安新区科技创新工程,北京市自然科学基金,CAMS医学科学创新基金(CIFMS),北京大学临床医学加X青年学者项目,中央大学基础研究基金,早期非小细胞肺癌智能诊断与治疗研究单位,中国医学科学院,国家自然科学基金,北京大学人民医院科研发展基金,国家重点研究发展计划,中央高校基础研究经费。
    UNASSIGNED: In order to address the low compliance and dissatisfied specificity of low-dose computed tomography (LDCT), efficient and non-invasive approaches are needed to complement its limitations for lung cancer screening and management. The ASCEND-LUNG study is a prospective two-stage case-control study designed to evaluate the performance of a liquid biopsy-based comprehensive lung cancer screening and post-screening pulmonary nodules management system.
    UNASSIGNED: We aimed to develop a comprehensive lung cancer system called Peking University Lung Cancer Screening and Management System (PKU-LCSMS) which comprises a lung cancer screening model to identify specific populations requiring LDCT and an artificial intelligence-aided (AI-aided) pulmonary nodules diagnostic model to classify pulmonary nodules following LDCT. A dataset of 465 participants (216 cancer, 47 benign, 202 non-cancer control) were used for the two models\' development phase. For the lung cancer screening model development, cancer participants were randomly split at a ratio of 1:1 into the train and validation cohorts, and then non-cancer controls were age-matched to the cancer cases in a 1:1 ratio. Similarly, for the AI-aided pulmonary nodules model, cancer and benign participants were also randomly divided at a ratio of 2:1 into the train and validation cohorts. Subsequently, during the model validation phase, sensitivity and specificity were validated using an independent validation cohort consisting of 291 participants (140 cancer, 25 benign, 126 non-cancer control). Prospectively collected blood samples were analyzed for multi-omics including cell-free DNA (cfDNA) methylation, mutation, and serum protein. Computerized tomography (CT) images data was also obtained. Paired tissue samples were additionally analyzed for DNA methylation, DNA mutation, and messenger RNA (mRNA) expression to further explore the potential biological mechanisms. This study is registered with ClinicalTrials.gov, NCT04817046.
    UNASSIGNED: Baseline blood samples were evaluated for the whole screening and diagnostic process. The cfDNA methylation-based lung cancer screening model exhibited the highest area under the curve (AUC) of 0.910 (95% CI, 0.869-0.950), followed by the protein model (0.891 [95% CI, 0.845-0.938]) and lastly the mutation model (0.577 [95% CI, 0.482-0.672]). Further, the final screening model, which incorporated cfDNA methylation and protein features, achieved an AUC of 0.963 (95% CI, 0.942-0.984). In the independent validation cohort, the multi-omics screening model showed a sensitivity of 99.2% (95% CI, 0.957-1.000) at a specificity of 56.3% (95% CI, 0.472-0.652). For the AI-aided pulmonary nodules diagnostic model, which incorporated cfDNA methylation and CT images features, it yielded a sensitivity of 81.1% (95% CI, 0.732-0.875), a specificity of 76.0% (95% CI, 0.549-0.906) in the independent validation cohort. Furthermore, four differentially methylated regions (DMRs) were shared in the lung cancer screening model and the AI-aided pulmonary nodules diagnostic model.
    UNASSIGNED: We developed and validated a liquid biopsy-based comprehensive lung cancer screening and management system called PKU-LCSMS which combined a blood multi-omics based lung cancer screening model incorporating cfDNA methylation and protein features and an AI-aided pulmonary nodules diagnostic model integrating CT images and cfDNA methylation features in sequence to streamline the entire process of lung cancer screening and post-screening pulmonary nodules management. It might provide a promising applicable solution for lung cancer screening and management.
    UNASSIGNED: This work was supported by Science, Science, Technology & Innovation Project of Xiongan New Area, Beijing Natural Science Foundation, CAMS Innovation Fund for Medical Sciences (CIFMS), Clinical Medicine Plus X-Young Scholars Project of Peking University, the Fundamental Research Funds for the Central Universities, Research Unit of Intelligence Diagnosis and Treatment in Early Non-small Cell Lung Cancer, Chinese Academy of Medical Sciences, National Natural Science Foundation of China, Peking University People\'s Hospital Research and Development Funds, National Key Research and Development Program of China, and the fundamental research funds for the central universities.
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  • 文章类型: Journal Article
    背景:随着计算机断层扫描技术的普及,越来越多的肺结节(PNs)被检测到。PN的风险分层对于检测早期肺癌至关重要,同时最大程度地减少良性结节的过度诊断。本研究旨在开发一种基于甲基化的循环肿瘤DNA(ctDNA),PN风险分层的非侵入性模型。
    方法:设计了一种基于血液的检测方法(“LUNG-TRAC”),包括从内部减少的代表性亚硫酸氢盐测序数据和文献中已知的标记中鉴定的新型肺癌ctDNA甲基化标记。基于来自良性或恶性PNs患者的183个ctDNA样本对分层模型进行了训练,并在62个患者中进行了验证。在单中心和多中心队列中进一步对肺-TRAC进行了单盲测试。
    结果:LUNG-TRAC模型在验证集中实现了0.810的曲线下面积(AUC)(灵敏度=74.4%,特异性=73.7%)。两个测试集用于评估LUNG-TRAC的性能,单中心测试的AUC为0.815(N=61;敏感性=67.5%,特异性=76.2%),多中心测试的AUC为0.761(N=95;敏感性=50.7%,特异性=80.8%)。通过将其与两个已建立的风险分层模型进行比较,进一步评估了LUNG-TRAC的临床实用性:梅奥诊所和退伍军人管理局模型。它在验证和单中心测试集中都优于此。
    结论:LUNG-TRAC模型证明了对PN进行恶性肿瘤风险分层的准确性和一致性,提示其作为早期周围型肺癌的非侵入性诊断辅助手段的效用。
    背景:www.
    结果:gov(NCT03989219)。
    BACKGROUND: With the popularization of computed tomography, more and more pulmonary nodules (PNs) are being detected. Risk stratification of PNs is essential for detecting early-stage lung cancer while minimizing the overdiagnosis of benign nodules. This study aimed to develop a circulating tumor DNA (ctDNA) methylation-based, non-invasive model for the risk stratification of PNs.
    METHODS: A blood-based assay (\"LUNG-TRAC\") was designed to include novel lung cancer ctDNA methylation markers identified from in-house reduced representative bisulfite sequencing data and known markers from the literature. A stratification model was trained based on 183 ctDNA samples derived from patients with benign or malignant PNs and validated in 62 patients. LUNG-TRAC was further single-blindly tested in a single- and multi-center cohort.
    RESULTS: The LUNG-TRAC model achieved an area under the curve (AUC) of 0.810 (sensitivity = 74.4 % and specificity = 73.7 %) in the validation set. Two test sets were used to evaluate the performance of LUNG-TRAC, with an AUC of 0.815 in the single-center test (N = 61; sensitivity = 67.5 % and specificity = 76.2 %) and 0.761 in the multi-center test (N = 95; sensitivity = 50.7 % and specificity = 80.8 %). The clinical utility of LUNG-TRAC was further assessed by comparing it to two established risk stratification models: the Mayo Clinic and Veteran Administration models. It outperformed both in the validation and the single-center test sets.
    CONCLUSIONS: The LUNG-TRAC model demonstrated accuracy and consistency in stratifying PNs for the risk of malignancy, suggesting its utility as a non-invasive diagnostic aid for early-stage peripheral lung cancer.
    BACKGROUND: www.
    RESULTS: gov (NCT03989219).
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  • 文章类型: Journal Article
    炎症在肺结节(PNs)从良性向恶性的转变中起着重要作用。预测PNs的良性和恶性仍然缺乏有效的方法。尽管Mayo或Brock模型已广泛应用于临床实践,其应用条件有限。本研究旨在通过使用炎症相关生物标志物(IRBM)的机器学习来构建PN的诊断模型。
    首先从GSE135304芯片数据中提取炎症相关基因(IRGs)。然后,在恶性肺结节(MN)和良性肺结节(BN)之间筛选差异表达基因(DEGs)和浸润免疫细胞。对DEGs与浸润免疫细胞进行相关性分析。通过一致性聚类分析鉴定IRG的分子模块。随后,通过加权基因共表达网络分析(WGCNA)过滤IRG模块中的IRBM。利用机器学习方法建立了最优诊断模型。最后,使用外部数据集GSE108375验证该结果.
    4个hubIRGs和3个免疫细胞在MN和BN之间显示出显着差异,C1和C2模块,即PRTN3,ELANE,NFKB1和CTLA4,T细胞CD4初始,NK细胞激活和单核细胞。通过WGCNA分析从黑色模块和黄绿色模块中筛选IRBM。支持向量机(SVM)被确定为最佳模型,曲线下面积(AUC)为0.753。基于5个集线器IRBM建立了一个列线图,即HS.137078,KLC3,C13ORF15,STOM和KCTD13。最后,外部数据集GSE108375验证了此结果,AUC为0.718。
    由5个集线器IRBM建立的SVM模型能够有效地识别MN或BN。炎症和免疫功能障碍的积累对BN向MN的转化至关重要。
    UNASSIGNED: Inflammation plays an important role in the transformation of pulmonary nodules (PNs) from benign to malignant. Prediction of benignancy and malignancy of PNs is still lacking efficacy methods. Although Mayo or Brock model have been widely applied in clinical practices, their application conditions are limited. This study aims to construct a diagnostic model of PNs by machine learning using inflammation-related biological markers (IRBMs).
    UNASSIGNED: Inflammatory related genes (IRGs) were first extracted from GSE135304 chip data. Then, differentially expressed genes (DEGs) and infiltrating immune cells were screened between malignant pulmonary nodules (MN) and benign pulmonary nodule (BN). Correlation analysis was performed on DEGs and infiltrating immune cells. Molecular modules of IRGs were identified through Consistency cluster analysis. Subsequently, IRBMs in IRGs modules were filtered through Weighted gene co-expression network analysis (WGCNA). An optimal diagnostic model was established using machine learning methods. Finally, external dataset GSE108375 was used to verify this result.
    UNASSIGNED: 4 hub IRGs and 3 immune cells showed significantly difference between MN and BN, C1 and C2 module, namely PRTN3, ELANE, NFKB1 and CTLA4, T cells CD4 naïve, NK cells activated and Monocytes. IRBMs were screened from black module and yellowgreen module through WGCNA analysis. The Support vector machines (SVM) was identified as the optimal model with the Area Under Curve (AUC) was 0.753. A nomogram was established based on 5 hub IRBMs, namely HS.137078, KLC3, C13ORF15, STOM and KCTD13. Finally, external dataset GSE108375 verified this result, with the AUC was 0.718.
    UNASSIGNED: SVM model established by 5 hub IRBMs was able to effectively identify MN or BN. Accumulating inflammation and immune dysfunction were important to the transformation from BN to MN.
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  • 文章类型: Journal Article
    肺结节很小,通常通过计算机断层扫描(CT)扫描识别的局灶性病变。虽然大多数是良性的,其中一小部分可能是恶性的或可能变成恶性的,强调早期发现和有效管理的重要性。本研究系统地回顾了流行病学,危险因素,以及肺结节的管理策略,比较中国人群和非中国人群的研究结果,以更好地为预测肺结节患者医疗服务需求的精算提供依据.
    我们对PubMed和ChinaKnowledgeInfrastructure(CNKI)数据库进行了系统分析,以研究报告通过CT扫描对肺结节的检出率。包括横断面研究和来自纵向研究的基线数据。使用改良版本的纽卡斯尔-渥太华量表来评估偏倚风险,并使用随机效应模型来估计总体患病率。
    我们确定了32项研究,并将其中24项纳入了我们的荟萃分析。汇总分析显示,去除异常值后,肺结节的总体患病率为0.27(95%置信区间:0.25-0.29)。亚组分析表明,中国人群和非中国人群的患病率没有显着差异。男性(0.38)的患病率略高于女性(0.36),但不显著(P=0.88)。年龄和吸烟是研究中最常报告的危险因素。
    总的来说,27%的参与者对肺结节呈阳性。年龄增长和吸烟一直被认为是肺结节发生率的关键危险因素。尽管不同研究的管理策略不同,最近的指南推荐了个性化的管理策略,优先化结节大小,特点,和个人风险因素,以优化结果。
    UNASSIGNED: Pulmonary nodules are small, focal lesions often identified via computed tomography (CT) scans. Although the majority are benign, a small percentage of them may be malignant or potentially become malignant, underscoring the importance of early detection and effective management. This study systematically reviews the epidemiology, risk factors, and management strategies for pulmonary nodules, comparing findings across Chinese and non-Chinese populations to better inform the actuarial calculations for predicting the demand of medical services for patients with pulmonary nodules.
    UNASSIGNED: We performed a systematic analysis of the PubMed and China Knowledge Infrastructure (CNKI) databases for studies reporting the detection rate of pulmonary nodules through CT scans. Both cross-sectional studies and the baseline data from longitudinal studies were included. A modified version of the Newcastle-Ottawa Scale was used to assess the risk of bias and random effect models were used to estimate the overall prevalence.
    UNASSIGNED: We identified 32 studies and included 24 of them in our meta-analysis. Pooled analysis showed that the overall prevalence of pulmonary nodules was 0.27 (95% confidence interval: 0.25-0.29) after outliers removal. Subgroup analysis showed that there was no significant difference for prevalence between Chinese and non-Chinese populations. Males (0.38) were shown to have slightly higher prevalence compared to females (0.36), but not significant (P=0.88). Age and smoking are the most frequently reported risk factors by studies.
    UNASSIGNED: Overall, 27% of participants were positive for pulmonary nodules. Advancing age and smoking were consistently identified as a key risk factor for the incidence of pulmonary nodules. Although the management strategies are different across studies, recent guidelines recommend personalized management strategies, prioritizing nodule size, characteristics, and individual risk factors to optimize outcomes.
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  • 文章类型: Journal Article
    术前计算机断层扫描(CT)引导的肺小结节(SPN)定位是电视胸腔镜手术(VATS)术中准确可视化的主要方法。然而,这种介入手术有一定的风险,可能会对经验不足的初级医生构成挑战。本研究旨在评估机器人辅助CT引导下在VATS术前使用改良钩针定位肺结节的可行性和有效性。
    共纳入599例术前接受机器人辅助CT引导经皮肺定位的654例SPN患者,并与90例接受常规CT引导手动定位的94例SPN患者进行比较。包括患者基本信息在内的临床和影像学资料,肺结节特征,定位程序发现,并对手术时间进行了分析。
    定位成功率为96.64%(632/654)。标记所需的平均时间为22.85±10.27分钟。锚定移位2例(0.31%)。局部相关并发症包括气胸163例(27.21%),222例(33.94%),胸膜反应3例(0.50%),肋间血管出血5例(0.83%)。在24小时内进行定位和VATS。已在VATS中成功检索所有设备。组织病理学检查发现166个(25.38%)良性结节和488个(74.62%)恶性结节。对于接受定位的患者,VATS花费的时间明显更短,尤其是节段切除术组(93.61±35.72vs.167.50±40.70min,P<0.001)。与传统手动组相比,机器人辅助组的气胸比例明显降低(27.21%vs.43.33%,P=0.002)。
    机器人辅助CT引导下经皮肺结节钩丝定位可有效帮助初级经验不足的介入医师掌握手术,并有可能提高精确度。
    UNASSIGNED: Preoperative computed tomography (CT)-guided localization of small pulmonary nodules (SPNs) is the major approach for accurate intraoperative visualization in video-assisted thoracoscopic surgery (VATS). However, this interventional procedure has certain risks and may challenge to less experienced junior doctors. This study aims to evaluate the feasibility and efficacy of robotic-assisted CT-guided preoperative pulmonary nodules localization with the modified hook-wire needles before VATS.
    UNASSIGNED: A total of 599 patients with 654 SPNs who preoperatively accepted robotic-assisted CT-guided percutaneous pulmonary localization were respectively enrolled and compared to 90 patients with 94 SPNs who underwent the conventional CT-guided manual localization. The clinical and imaging data including patients\' basic information, pulmonary nodule features, location procedure findings, and operation time were analyzed.
    UNASSIGNED: The localization success rate was 96.64% (632/654). The mean time required for marking was 22.85±10.27 min. Anchor of dislodgement occurred in 2 cases (0.31%). Localization-related complications included pneumothorax in 163 cases (27.21%), parenchymal hemorrhage in 222 cases (33.94%), pleural reaction in 3 cases (0.50%), and intercostal vascular hemorrhage in 5 cases (0.83%). Localization and VATS were performed within 24 hours. All devices were successfully retrieved in VATS. Histopathological examination revealed 166 (25.38%) benign nodules and 488 (74.62%) malignant nodules. For patients who received localizations, VATS spent a significantly shorter time, especially the segmentectomy group (93.61±35.72 vs. 167.50±40.70 min, P<0.001). The proportion of pneumothorax in the robotic-assisted group significantly decreased compared with the conventional manual group (27.21% vs. 43.33%, P=0.002).
    UNASSIGNED: Robotic-assisted CT-guided percutaneous pulmonary nodules hook-wire localization could be effectively helpful for junior less experienced interventional physicians to master the procedure and potentially increase precision.
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  • 文章类型: Journal Article
    通过术前定位,外科医生可以轻松定位磨玻璃结节(GGNs)并有效控制切除范围。因此,有必要选择合适的穿刺定位方法。目的评价医用胶和定位钩在GGNs术前定位中的有效性和安全性,为临床选择提供参考。
    从2020年3月30日至2022年6月13日,共有859例CT诊断为需要手术切除的GGNs的患者被纳入我们医院的研究。其中,排除了21例因各种原因选择退出或无法进行术前定位的患者。此外,还排除了475例使用医用胶进行术前定位的患者和363例通过定位钩进行术前定位的患者。我们对基线数据进行了统计分析,成功率,并发症,其余患者的病理结果。成功率,并发症发生率,比较两组的病理结果-接受医用胶定位的患者和接受定位钩定位的患者。
    两组患者在年龄方面无统计学差异,身体质量指数,吸烟史,结节的位置,结节与胸膜的距离,或术后病理结果(P>0.05)。医用胶和定位钩的成功率为100%。单结节定位过程中医用胶和定位钩的并发症发生率分别为39.18%和23.18%,分别,差异有统计学意义(p<0.001);多结节定位的并发症发生率分别为49.15%和49.18%,分别,差异无统计学意义(p>0.05)。此外,定位方法和患者的临床特征未发现是发生并发症的独立危险因素。在COVID-19流行的2020-2022年期间,肺结节的检出率也与COVID-19的传播呈正相关。
    定位单个节点时,定位钩的安全性大于定位多个节点时,医用胶和定位钩的安全性相当,应根据患者的个体情况选择合适的定位方法。
    UNASSIGNED: Through preoperative localization, surgeons can easily locate ground glass nodules (GGNs) and effectively control the extent of resection. Therefore, it is necessary to choose an appropriate puncture positioning method. The purpose of this study was to evaluate the effectiveness and safety of medical glue and positioning hooks in the preoperative positioning of GGNs and to provide a reference for clinical selection.
    UNASSIGNED: From March 30, 2020 to June 13, 2022, a total of 859 patients with a CT diagnosis of GGNs requiring surgical resection were included in our study at the hospital. Among them, 21 patients who either opted out or could not undergo preoperative localization for various reasons were excluded. Additionally, 475 patients who underwent preoperative localization using medical glue and 363 patients who underwent preoperative localization through positioning hooks were also excluded. We conducted statistical analyses on the baseline data, success rates, complications, and pathological results of the remaining patients. The success rates, complication rates, and pathological results were compared between the two groups-those who received medical glue localization and those who received positioning hook localization.
    UNASSIGNED: There was no statistically significant difference between the two groups of patients in terms of age, body mass index, smoking history, location of the nodule, distance of the nodule from the pleura, or postoperative pathological results (P > 0.05). The success rate of medical glue and positioning hooks was 100%. The complication rates of medical glue and positioning hooks during single nodule positioning were 39.18% and 23.18%, respectively, which were significantly different (p < 0.001); the complication rates during multiple nodule positioning were 49.15% and 49.18%, respectively, with no statistically significant differences (p > 0.05). In addition, the method of positioning and the clinical characteristics of the patients were not found to be independent risk factors for the occurrence of complications. The detection rate of pulmonary nodules also showed some positive correlation with the spread of COVID-19 during the 2020-2022 period when COVID-19 was prevalent.
    UNASSIGNED: When positioning a single node, the safety of positioning hooks is greater than when positioning multiple nodes, the safety of medical glue and positioning hooks is comparable, and the appropriate positioning method should be chosen according to the individual situation of the patient.
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  • 文章类型: Journal Article
    目的:探讨普瑞巴林联合曲马多/扑热息痛对CT引导下肺结节穿刺定位患者急性疼痛的影响。
    方法:在本随机分组中,安慰剂对照和单中心研究,将120例患者随机分为四组:对照组(P组),普瑞巴林-安慰剂组(BP组),曲马多/扑热息痛-安慰剂组(AP组),和普瑞巴林-曲马多/扑热息痛组(AB组)。主要结果是NRS(数值评定量表)评分。其他结果包括收缩压(SBP),舒张压(DBP),心率(HR),脉搏氧饱和度(SpO2),中度至重度疼痛的发生率,镇痛恢复率,药物不良反应发生率和患者满意度。
    结果:干预措施之间没有检测到显著的交互作用(P=0.752)。服用普瑞巴林组和服用曲马多/扑热息痛组的NRS评分分别低于不服用普瑞巴林组和不服用曲马多/扑热息痛组(P<0.05)。四组NRS评分差异有统计学意义(P<0.001)。AB组NRS评分明显低于P组(P<0.001),BP组(P<0.001)和AP组(P=0.001)。同时,BP组(P<0.001)和AP组(P<0.001)的NRS评分明显低于P组,BP组和AP组之间无显著性差异(P=1.000)。SBP,DBP,HR,AB组的中重度疼痛发生率和镇痛恢复率明显低于P组(P<0.05),而SpO2和非常满意的人数明显高于P组(P<0.05)。四组药物不良反应发生率差异无统计学意义(P=0.272)。
    结论:普瑞巴林和曲马多/扑热息痛联合或单独使用可有效缓解定位后的急性疼痛。普瑞巴林联合曲马多/扑热息痛镇痛效果最佳,可显著降低血流动力学波动,安全性高,药物不良反应发生率低,具有一定的临床推广应用价值。
    OBJECTIVE: To investigate the effects of pregabalin combined with tramadol/paracetamol on acute pain in patients with CT-guided puncture localization of pulmonary nodules.
    METHODS: In this randomized, placebo-controlled and single-center study, 120 patients were allocated randomly to four groups: the control group (Group P), the pregabalin-placebo group (Group BP), the tramadol/paracetamol-placebo group (Group AP), and the pregabalin-tramadol/paracetamol group (Group AB). The primary outcome was the NRS (Numerical Rating Scale) score. Other outcomes included systolic blood pressure (SBP), diastolic blood pressure (DBP), heart rate (HR), pulse oxygen saturation (SpO2), the incidence of moderate to severe pain, the analgesia recovery ratio, the incidence of adverse drug reactions and patients\' satisfaction.
    RESULTS: No significant interaction was detected between the interventions (P = 0.752). The NRS score of the Taking pregabalin group and the Taking tramadol/paracetamol group were significantly lower than those of the Not-taking pregabalin group and the Not-taking tramadol/paracetamol group respectively (P < 0.05). There was significant difference in the NRS scores among the four groups (P < 0.001). The NRS score of Group AB was significantly lower than that of Group P (P < 0.001), Group BP (P < 0.001) and Group AP (P = 0.001). At the same time, the NRS scores of Group BP (P < 0.001) and Group AP (P < 0.001) were significantly lower than those of Group P, but there was no significant difference between Group BP and Group AP (P = 1.000). The SBP, DBP, HR, the incidence of moderate to severe pain and the analgesia recovery ratio of Group AB were significantly lower than those of Group P (P < 0.05), while the SpO2 and the number of people who were very satisfied were significantly higher than those of Group P (P < 0.05). There was no significant difference in the incidence of adverse drug reactions among the four groups (P = 0.272).
    CONCLUSIONS: The combination or single use of pregabalin and tramadol/paracetamol can effectively relieve the acute pain after localization. Pregabalin combined with tramadol/paracetamol has the best analgesic effect and significantly reduces the hemodynamic fluctuations, with high safety and low incidence of adverse drug reactions, which has a certain clinical popularization and application value.
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  • 文章类型: Journal Article
    背景:本研究旨在探讨在电视胸腔镜手术(VATS)切除前,在计算机断层扫描(CT)引导下定位肺结节(PN)的有效性,并确定定位相关并发症的危险因素。
    方法:我们招募了193例接受术前CT引导下PN钩针定位的患者。根据CT和VATS将患者分为A组(103例患者无并发症)和B组(90例患者有并发症)。使用单因素和多因素逻辑回归分析来确定定位相关并发症的危险因素。使用数字评分量表评估钩针定位引起的疼痛。
    结果:我们成功对173例(89.6%)患者进行了定位。气胸是82例(42.5%)患者的主要并发症。患者性别,年龄,身体质量指数,肿瘤直径,实变肿瘤比率,病理诊断,定位过程中的位置调整,病变位置,等待手术的时间,两组胸膜粘连无明显差异。结节的数量,穿刺次数,肩胛骨静止位置,和肺实质内的插入深度是成功定位的重要因素。多元回归分析进一步验证了结节的数量,肩胛骨静止位置,和肺实质内的插入深度是钩丝定位相关并发症的危险因素。Hookwire定位引起的疼痛主要是术前和术后轻度或中度,有些患者术后7天仍有疼痛。
    结论:Hookwire术前PN定位成功率高,但是一些并发症仍然存在。因此,临床医生应提高警惕,期待进一步改善。
    BACKGROUND: This study aimed to explore the efficacy of hookwire for computed tomography (CT)-guided pulmonary nodule (PN) localization before video-assisted thoracoscopic surgery (VATS) resection and determine the risk factors for localization-related complications.
    METHODS: We enrolled 193 patients who underwent preoperative CT-guided PN hookwire localization. The patients were categorized into groups A (103 patients had no complications) and B (90 patients had complications) according to CT and VATS. Uni- and multivariate logistic regression analyses were used to identify risk factors for localization-related complications. A numerical rating scale was used to evaluate hookwire localization-induced pain.
    RESULTS: We successfully performed localization in 173 (89.6%) patients. Pneumothorax was the main complication in 82 patients (42.5%). Patient gender, age, body mass index, tumor diameter, consolidation tumor ratio, pathologic diagnosis, position adjustment during location, lesion location, waiting time for surgery, and pleural adhesions were not significantly different between the two groups. The number of nodules, number of punctures, scapular rest position, and depth of insertion within the lung parenchyma were significant factors for successful localization. Multivariate regression analysis further validated the number of nodules, scapular rest position, and depth of insertion within the lung parenchyma as risk factors for hookwire-localization-related complications. Hookwire localization-induced pain is mainly mild or moderate pre- and postoperatively, and some patients still experience pain 7 days postoperatively.
    CONCLUSIONS: Hookwire preoperative PN localization has a high success rate, but some complications remain. Thus, clinicians should be vigilant and look forward to further improvement.
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