Radiogenomics

放射基因组学
  • 文章类型: Journal Article
    背景:高级别浆液性卵巢癌(HGSOC),以其异质性而闻名,复发率高,和转移,通常在分散在几个地点后被诊断出来,约80%的患者经历复发。尽管对其转移性有了更好的了解,HGSOC患者的生存率仍然很低。
    方法:我们的研究利用空间转录组学(ST)来解释肿瘤微环境,并利用计算机断层扫描(CT)来检查8例HGSOC患者的空间特征,这些患者分为复发(R)和具有挑战性的非复发(NR)组。
    结果:通过整合ST数据与公共单细胞RNA测序数据,批量RNA测序数据,和CT数据,我们鉴定了与CT表型相关的特定细胞群富集和差异表达基因.重要的是,我们阐明了肿瘤坏死因子-α通过NF-κB,氧化磷酸化,G2/M检查点,E2F目标,和MYC目标作为复发的指标(不良预后标志物),这些途径在R组和某些CT表型中均显着富集。此外,我们确定了许多提示无复发的预后标志物(良好的预后标志物).在内部HGSOC样品以及公共HGSOCTCIA和TCGA样品中,PTGDS的表达下调与较高数量的接种位点(≥3个)有关。此外,根据我们的ST数据,R组肿瘤区和间质区的PTGDS表达低于NR组.在我们的ST和放射基因组学分析中,趋化性相关标志物(CXCL14和NTN4)和与免疫调节相关的标志物(DAPL1和RNASE1)也被发现是良好的预后标志物。
    结论:这项研究证明了放射性基因组学的潜力,结合CT和ST,用于确定HGSOC的诊断和治疗靶标,标志着个性化医疗迈出了一步。
    BACKGROUND: High-grade serous ovarian cancer (HGSOC), which is known for its heterogeneity, high recurrence rate, and metastasis, is often diagnosed after being dispersed in several sites, with about 80% of patients experiencing recurrence. Despite a better understanding of its metastatic nature, the survival rates of patients with HGSOC remain poor.
    METHODS: Our study utilized spatial transcriptomics (ST) to interpret the tumor microenvironment and computed tomography (CT) to examine spatial characteristics in eight patients with HGSOC divided into recurrent (R) and challenging-to-collect non-recurrent (NR) groups.
    RESULTS: By integrating ST data with public single-cell RNA sequencing data, bulk RNA sequencing data, and CT data, we identified specific cell population enrichments and differentially expressed genes that correlate with CT phenotypes. Importantly, we elucidated that tumor necrosis factor-α signaling via NF-κB, oxidative phosphorylation, G2/M checkpoint, E2F targets, and MYC targets served as an indicator of recurrence (poor prognostic markers), and these pathways were significantly enriched in both the R group and certain CT phenotypes. In addition, we identified numerous prognostic markers indicative of nonrecurrence (good prognostic markers). Downregulated expression of PTGDS was linked to a higher number of seeding sites (≥ 3) in both internal HGSOC samples and public HGSOC TCIA and TCGA samples. Additionally, lower PTGDS expression in the tumor and stromal regions was observed in the R group than in the NR group based on our ST data. Chemotaxis-related markers (CXCL14 and NTN4) and markers associated with immune modulation (DAPL1 and RNASE1) were also found to be good prognostic markers in our ST and radiogenomics analyses.
    CONCLUSIONS: This study demonstrates the potential of radiogenomics, combining CT and ST, for identifying diagnostic and therapeutic targets for HGSOC, marking a step towards personalized medicine.
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  • 文章类型: Journal Article
    这篇全面的综述探讨了放射治疗在癌症治疗中的关键作用。强调遗传分析的多样化应用。这篇综述强调了预测辐射毒性的遗传标记,实现个性化的治疗计划。它深入研究了基因分析对各种癌症类型的放射治疗策略的影响,讨论与治疗反应相关的研究结果,预后,和治疗抗性。基因分析的整合被证明可以改变癌症治疗范式,提供个性化放射治疗方案的见解,并在标准协议可能达不到的情况下指导决策。最终,该综述强调了基因谱分析在提高患者预后和推进肿瘤学精准医疗方面的潜力.
    This comprehensive review explores the pivotal role of radiotherapy in cancer treatment, emphasizing the diverse applications of genetic profiling. The review highlights genetic markers for predicting radiation toxicity, enabling personalized treatment planning. It delves into the impact of genetic profiling on radiotherapy strategies across various cancer types, discussing research findings related to treatment response, prognosis, and therapeutic resistance. The integration of genetic profiling is shown to transform cancer treatment paradigms, offering insights into personalized radiotherapy regimens and guiding decisions in cases where standard protocols may fall short. Ultimately, the review underscores the potential of genetic profiling to enhance patient outcomes and advance precision medicine in oncology.
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  • 文章类型: Journal Article
    本研究旨在探讨肾透明细胞癌(ccRCC)的影像学表现与基因组特征的关系,重点是通过计算机断层扫描(CT)检测到的脂肪分化相关蛋白(ADFP)的表达。目的是建立放射基因组脂质谱并了解其与肿瘤特征的关联。来自癌症基因组图谱(TCGA)和癌症成像档案(TCIA)的数据用于将成像特征与ccRCC中的脂肪分化相关蛋白(ADFP)表达相关联。CT扫描评估了各种肿瘤特征,包括尺寸,composition,margin,坏死,和增长模式,除了测量肿瘤Hounsfield单位(HU)和腹部脂肪组织区室。统计分析比较了人口统计学,临床病理特征,脂肪组织定量,和组间的肿瘤HU。在197名患者中,22.8%的ADFP表达与肾积水显著相关。表达ADFP的低级别ccRCC患者的内脏和皮下脂肪组织数量较高,肿瘤HU值较高。在没有ADFP表达的低度ccRCC患者中观察到类似的趋势。ccRCC中ADFP的表达与特定的影像学特征如肾积水和改变的脂肪组织分布相关。ADFP表达的低度ccRCC患者表现出明显的脂质代谢特征,强调放射学特征之间的关系,基因组表达,和肿瘤代谢。这些发现表明针对肿瘤脂质代谢的个性化诊断和治疗策略的潜力。
    This study aims to explore the relationship between radiological imaging and genomic characteristics in clear cell renal cell carcinoma (ccRCC), focusing on the expression of adipose differentiation-related protein (ADFP) detected through computed tomography (CT). The goal is to establish a radiogenomic lipid profile and understand its association with tumor characteristics. Data from The Cancer Genome Atlas (TCGA) and the Cancer Imaging Archive (TCIA) were utilized to correlate imaging features with adipose differentiation-related protein (ADFP) expression in ccRCC. CT scans assessed various tumor features, including size, composition, margin, necrosis, and growth pattern, alongside measurements of tumoral Hounsfield units (HU) and abdominal adipose tissue compartments. Statistical analyses compared demographics, clinical-pathological features, adipose tissue quantification, and tumoral HU between groups. Among 197 patients, 22.8% exhibited ADFP expression significantly associated with hydronephrosis. Low-grade ccRCC patients expressing ADFP had higher quantities of visceral and subcutaneous adipose tissue and lower tumoral HU values compared to their high-grade counterparts. Similar trends were observed in low-grade ccRCC patients without ADFP expression. ADFP expression in ccRCC correlates with specific imaging features such as hydronephrosis and altered adipose tissue distribution. Low-grade ccRCC patients with ADFP expression display a distinct lipid metabolic profile, emphasizing the relationship between radiological features, genomic expression, and tumor metabolism. These findings suggest potential for personalized diagnostic and therapeutic strategies targeting tumor lipid metabolism.
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  • 文章类型: Journal Article
    背景:三阴性乳腺癌(TNBC)是高度异质性的,导致患者对新辅助化疗(NAC)的反应和预后不同。这项研究旨在表征MRI上TNBC的异质性,并开发一种放射基因组模型来预测病理完全反应(pCR)和预后。
    方法:在这项回顾性研究中,在复旦大学上海肿瘤中心接受新辅助化疗的TNBC患者作为影像学发展队列(n=315);在这些患者中,可获得遗传数据的患者被纳入放射基因组发展队列(n=98).将两个队列的研究群体以7:3的比例随机分为训练集和验证集。外部验证队列(n=77)包括来自DUKE和I-SPY1数据库的患者。使用肿瘤内亚区域和肿瘤周围区域的特征来表征空间异质性。血流动力学异质性的特征在于来自肿瘤体的动力学特征。在选择特征后,通过逻辑回归建立了三个影像组学模型。模型1包括次区域和肿瘤周围特征,模型2包括动力学特征,模型3集成了模型1和模型2的功能。通过进一步整合病理和基因组特征来开发两个融合模型(PRM:病理学-放射组学模型;GPRM:基因组学-病理学-放射组学模型)。通过AUC和决策曲线分析评估模型性能。使用Kaplan-Meier曲线和多变量Cox回归评估预后影响。
    结果:在放射学模型中,代表多尺度异质性的多区域模型(模型3)表现出更好的pCR预测,训练中的AUC为0.87、0.79和0.78,内部验证,和外部验证集,分别。GPRM在训练(AUC=0.97,P=0.015)和验证集(AUC=0.93,P=0.019)中显示出预测pCR的最佳性能。模型3,PRM和GPRM可以通过无病生存期对患者进行分层,预测的非pCR与不良预后相关(P分别为0.034、0.001和0.019)。
    结论:DCE-MRI表征的多尺度异质性能有效预测TNBC患者的pCR和预后。放射基因组学模型可以作为有价值的生物标志物来提高预测性能。
    BACKGROUND: Triple-negative breast cancer (TNBC) is highly heterogeneous, resulting in different responses to neoadjuvant chemotherapy (NAC) and prognoses among patients. This study sought to characterize the heterogeneity of TNBC on MRI and develop a radiogenomic model for predicting both pathological complete response (pCR) and prognosis.
    METHODS: In this retrospective study, TNBC patients who underwent neoadjuvant chemotherapy at Fudan University Shanghai Cancer Center were enrolled as the radiomic development cohort (n = 315); among these patients, those whose genetic data were available were enrolled as the radiogenomic development cohort (n = 98). The study population of the two cohorts was randomly divided into a training set and a validation set at a ratio of 7:3. The external validation cohort (n = 77) included patients from the DUKE and I-SPY 1 databases. Spatial heterogeneity was characterized using features from the intratumoral subregions and peritumoral region. Hemodynamic heterogeneity was characterized by kinetic features from the tumor body. Three radiomics models were developed by logistic regression after selecting features. Model 1 included subregional and peritumoral features, Model 2 included kinetic features, and Model 3 integrated the features of Model 1 and Model 2. Two fusion models were developed by further integrating pathological and genomic features (PRM: pathology-radiomics model; GPRM: genomics-pathology-radiomics model). Model performance was assessed with the AUC and decision curve analysis. Prognostic implications were assessed with Kaplan‒Meier curves and multivariate Cox regression.
    RESULTS: Among the radiomic models, the multiregional model representing multiscale heterogeneity (Model 3) exhibited better pCR prediction, with AUCs of 0.87, 0.79, and 0.78 in the training, internal validation, and external validation sets, respectively. The GPRM showed the best performance for predicting pCR in the training (AUC = 0.97, P = 0.015) and validation sets (AUC = 0.93, P = 0.019). Model 3, PRM and GPRM could stratify patients by disease-free survival, and a predicted nonpCR was associated with poor prognosis (P = 0.034, 0.001 and 0.019, respectively).
    CONCLUSIONS: Multiscale heterogeneity characterized by DCE-MRI could effectively predict the pCR and prognosis of TNBC patients. The radiogenomic model could serve as a valuable biomarker to improve the prediction performance.
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  • 文章类型: Journal Article
    本研究旨在开发和验证放射基因组学列线图,用于在MRI和microRNAs(miRNA)的基础上预测肝细胞癌(HCC)中的微血管侵袭(MVI)。
    该队列研究包括168例经病理证实的HCC患者(训练队列:n=116;验证队列:n=52),他们接受了术前MRI和血浆miRNA检查。单变量和多变量逻辑回归用于确定与MVI相关的独立危险因素。这些风险因素用于产生列线图。通过受试者工作特征曲线(ROC)分析评估列线图的性能,灵敏度,特异性,准确度,和F1得分。进行决策曲线分析以确定列线图是否在临床上有用。
    MVI的独立危险因素是最大肿瘤长度,rad-score,和miRNA-21(均P<0.001)。敏感性,特异性,准确度,验证队列的列线图和F1评分分别为0.970,0.722,0.884和0.916.验证队列中的列线图的AUC为0.900(95%CI:0.808-0.992),高于任何其他单因素模型(最大肿瘤长度,rad-score,和miRNA-21)。
    放射基因组学列线图在预测HCC中的MVI方面显示出令人满意的预测性能,为肿瘤治疗决策提供了可行和实用的参考。
    UNASSIGNED: This study aimed to develop and validate a radiogenomics nomogram for predicting microvascular invasion (MVI) in hepatocellular carcinoma (HCC) on the basis of MRI and microRNAs (miRNAs).
    UNASSIGNED: This cohort study included 168 patients (training cohort: n = 116; validation cohort: n = 52) with pathologically confirmed HCC, who underwent preoperative MRI and plasma miRNA examination. Univariate and multivariate logistic regressions were used to identify independent risk factors associated with MVI. These risk factors were used to produce a nomogram. The performance of the nomogram was evaluated by receiver operating characteristic curve (ROC) analysis, sensitivity, specificity, accuracy, and F1-score. Decision curve analysis was performed to determine whether the nomogram was clinically useful.
    UNASSIGNED: The independent risk factors for MVI were maximum tumor length, rad-score, and miRNA-21 (all P < 0.001). The sensitivity, specificity, accuracy, and F1-score of the nomogram in the validation cohort were 0.970, 0.722, 0.884, and 0.916, respectively. The AUC of the nomogram was 0.900 (95% CI: 0.808-0.992) in the validation cohort, higher than that of any other single factor model (maximum tumor length, rad-score, and miRNA-21).
    UNASSIGNED: The radiogenomics nomogram shows satisfactory predictive performance in predicting MVI in HCC and provides a feasible and practical reference for tumor treatment decisions.
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  • 文章类型: Journal Article
    了解透明细胞肾细胞癌(ccRCC)的最新进展强调了BAP1基因在其发病机理和预后中的关键作用。虽然vonHippel-Lindau(VHL)突变已经被广泛研究,新出现的证据表明,BAP1和其他基因的突变显著影响患者的预后.有和没有基于CT成像的纹理分析的放射基因组学在预测BAP1突变状态和总体生存结果方面具有希望。然而,需要进行更大队列和标准化成像方案的前瞻性研究,以验证这些发现并将其有效转化为临床实践,为ccRCC的个性化治疗策略铺平了道路。本文就BAP1突变在ccRCC发病机制及预后中的作用进行综述。以及放射基因组学在预测突变状态和临床结局方面的潜力。
    Recent advancements in understanding clear cell renal cell carcinoma (ccRCC) have underscored the critical role of the BAP1 gene in its pathogenesis and prognosis. While the von Hippel-Lindau (VHL) mutation has been extensively studied, emerging evidence suggests that mutations in BAP1 and other genes significantly impact patient outcomes. Radiogenomics with and without texture analysis based on CT imaging holds promise in predicting BAP1 mutation status and overall survival outcomes. However, prospective studies with larger cohorts and standardized imaging protocols are needed to validate these findings and translate them into clinical practice effectively, paving the way for personalized treatment strategies in ccRCC. This review aims to summarize the current knowledge on the role of BAP1 mutation in ccRCC pathogenesis and prognosis, as well as the potential of radiogenomics in predicting mutation status and clinical outcomes.
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  • 文章类型: Journal Article
    从多组学数据中提取预后因素的深度学习工具最近有助于对生存结果进行个性化预测。然而,集成组学-成像-临床数据集的有限规模带来了挑战.这里,我们提出了两种生物学可解释和强大的深度学习架构,用于非小细胞肺癌(NSCLC)患者的生存预测,同时从计算机断层扫描(CT)扫描图像中学习,基因表达数据,和临床信息。拟议的模型集成了患者特定的临床,转录组,和成像数据,并纳入京都基因和基因组百科全书(KEGG)和反应组途径信息,在学习过程中增加生物学知识,以提取预后基因生物标志物和分子通路。虽然在仅130名患者的数据集上进行训练时,这两种模型都可以准确地对高风险和低风险组的患者进行分层,在稀疏自动编码器中引入交叉注意机制显着提高了性能,突出肿瘤区域和NSCLC相关基因作为潜在的生物标志物,因此在从小型成像组学临床样本中学习时提供了显着的方法学进步。
    Deep-learning tools that extract prognostic factors derived from multi-omics data have recently contributed to individualized predictions of survival outcomes. However, the limited size of integrated omics-imaging-clinical datasets poses challenges. Here, we propose two biologically interpretable and robust deep-learning architectures for survival prediction of non-small cell lung cancer (NSCLC) patients, learning simultaneously from computed tomography (CT) scan images, gene expression data, and clinical information. The proposed models integrate patient-specific clinical, transcriptomic, and imaging data and incorporate Kyoto Encyclopedia of Genes and Genomes (KEGG) and Reactome pathway information, adding biological knowledge within the learning process to extract prognostic gene biomarkers and molecular pathways. While both models accurately stratify patients in high- and low-risk groups when trained on a dataset of only 130 patients, introducing a cross-attention mechanism in a sparse autoencoder significantly improves the performance, highlighting tumor regions and NSCLC-related genes as potential biomarkers and thus offering a significant methodological advancement when learning from small imaging-omics-clinical samples.
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  • 文章类型: Journal Article
    背景:放射基因组学是一种新兴的技术,它集成了基因组学和基于医学图像的放射组学,这被认为是实现精准医学的一种有希望的方法。
    目的:本研究的目的是定量分析研究现状,动态趋势,和使用文献计量学方法在放射基因组学领域的进化轨迹。
    方法:从WebofScienceCoreCollection检索到截至2023年发表的相关文献。使用Excel分析年度出版趋势。VOSviewer用于构建关键词共现网络以及国家和机构之间的合作网络。CiteSpace用于引用关键词突发分析和可视化参考时间线。
    结果:共纳入3237篇论文,并以纯文本格式导出。出版物的年度数量呈逐年增长的趋势。中国和美国在这一领域发表的论文最多,在美国被引用次数最多,在荷兰被引用次数最高。关键词突发分析表明,几个关键词,包括“大数据”,“磁共振波谱”,肾细胞癌,\"\"阶段,\"和\"替莫唑胺,“近年来经历了一次引文爆发。时间线视图表明,参考文献可以分为8个簇:低级别神经胶质瘤,肺癌组织学,肺腺癌,乳腺癌,放射性肺损伤,表皮生长因子受体突变,晚期放疗毒性,和人工智能。
    结论:放射基因组学领域越来越受到全世界研究人员的关注,美国和荷兰是最具影响力的国家。探索基于大数据的人工智能方法来预测肿瘤对各种治疗方法的反应是目前该领域的研究热点。
    BACKGROUND: Radiogenomics is an emerging technology that integrates genomics and medical image-based radiomics, which is considered a promising approach toward achieving precision medicine.
    OBJECTIVE: The aim of this study was to quantitatively analyze the research status, dynamic trends, and evolutionary trajectory in the radiogenomics field using bibliometric methods.
    METHODS: The relevant literature published up to 2023 was retrieved from the Web of Science Core Collection. Excel was used to analyze the annual publication trend. VOSviewer was used for constructing the keywords co-occurrence network and the collaboration networks among countries and institutions. CiteSpace was used for citation keywords burst analysis and visualizing the references timeline.
    RESULTS: A total of 3237 papers were included and exported in plain-text format. The annual number of publications showed an increasing annual trend. China and the United States have published the most papers in this field, with the highest number of citations in the United States and the highest average number per item in the Netherlands. Keywords burst analysis revealed that several keywords, including \"big data,\" \"magnetic resonance spectroscopy,\" \"renal cell carcinoma,\" \"stage,\" and \"temozolomide,\" experienced a citation burst in recent years. The timeline views demonstrated that the references can be categorized into 8 clusters: lower-grade glioma, lung cancer histology, lung adenocarcinoma, breast cancer, radiation-induced lung injury, epidermal growth factor receptor mutation, late radiotherapy toxicity, and artificial intelligence.
    CONCLUSIONS: The field of radiogenomics is attracting increasing attention from researchers worldwide, with the United States and the Netherlands being the most influential countries. Exploration of artificial intelligence methods based on big data to predict the response of tumors to various treatment methods represents a hot spot research topic in this field at present.
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  • 文章类型: Journal Article
    多形性胶质母细胞瘤(GBM)是最常见和侵袭性的原发性脑肿瘤。尽管基于替莫唑胺(TMZ)的放化疗可改善GBM患者的总体生存率,它还增加了治疗后磁共振成像(MRI)评估肿瘤进展的假阳性频率.假性进展(PsP)是一种与治疗相关的反应,在MRI上,肿瘤部位或切除边缘的对比增强病变大小增加,影响肿瘤复发。在GBM患者的临床管理中,迫切需要准确可靠地预测GBM进展。临床资料分析表明,PsP患者的总体生存率和无进展生存率均较高。在这项研究中,我们旨在建立一个预后模型,以评估GBM患者接受标准治疗后的肿瘤进展潜能.我们应用字典学习方案从Wake数据集中获得具有PsP或真实肿瘤进展(TTP)的GBM患者的成像特征。基于这些射线照相特征,我们进行了放射基因组学分析,以鉴定显著相关的基因.这些显著相关的基因被用作构建2YS(2年生存率)逻辑回归模型的特征。根据从该模型得到的个体2YS评分将GBM患者分为低生存风险组和高生存风险组。我们使用独立的癌症基因组图谱计划(TCGA)数据集测试了我们的模型,发现2YS评分与患者的总生存期显着相关。我们使用了两组TCGA数据来训练和测试我们的模型。我们的结果表明,来自训练和测试TCGA数据集的基于2YS分数的分类结果与患者的总体生存率显着相关。我们还分析了其他临床因素(性别,年龄,KPS(Karnofsky性能状态),正常细胞比率),并发现这些因素与患者的生存无关或弱相关。总的来说,我们的研究证明了2YS模型在预测GBM患者接受标准治疗后的临床结局方面的有效性和稳健性.
    Glioblastoma multiforme (GBM)is the most common and aggressive primary brain tumor. Although temozolomide (TMZ)-based radiochemotherapy improves overall GBM patients\' survival, it also increases the frequency of false positive post-treatment magnetic resonance imaging (MRI) assessments for tumor progression. Pseudo-progression (PsP) is a treatment-related reaction with an increased contrast-enhancing lesion size at the tumor site or resection margins miming tumor recurrence on MRI. The accurate and reliable prognostication of GBM progression is urgently needed in the clinical management of GBM patients. Clinical data analysis indicates that the patients with PsP had superior overall and progression-free survival rates. In this study, we aimed to develop a prognostic model to evaluate the tumor progression potential of GBM patients following standard therapies. We applied a dictionary learning scheme to obtain imaging features of GBM patients with PsP or true tumor progression (TTP) from the Wake dataset. Based on these radiographic features, we conducted a radiogenomics analysis to identify the significantly associated genes. These significantly associated genes were used as features to construct a 2YS (2-year survival rate) logistic regression model. GBM patients were classified into low- and high-survival risk groups based on the individual 2YS scores derived from this model. We tested our model using an independent The Cancer Genome Atlas Program (TCGA) dataset and found that 2YS scores were significantly associated with the patient\'s overall survival. We used two cohorts of the TCGA data to train and test our model. Our results show that the 2YS scores-based classification results from the training and testing TCGA datasets were significantly associated with the overall survival of patients. We also analyzed the survival prediction ability of other clinical factors (gender, age, KPS (Karnofsky performance status), normal cell ratio) and found that these factors were unrelated or weakly correlated with patients\' survival. Overall, our studies have demonstrated the effectiveness and robustness of the 2YS model in predicting the clinical outcomes of GBM patients after standard therapies.
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  • 文章类型: Journal Article
    动静脉畸形(AVM)是罕见的血管异常,涉及动脉和静脉的紊乱,没有毛细血管介入。在过去的10年里,影像组学和机器学习(ML)模型在分析诊断医学图像方面变得越来越流行。这篇综述的目的是提供目前用于诊断的放射学模型的全面总结,治疗性的,预后,以及AVM管理中的预测性结果。
    根据系统评价和荟萃分析(PRISMA)2020指南的首选报告项目进行了系统文献综述,其中使用以下术语搜索PubMed和Embase数据库:(脑或脑或颅内或中枢神经系统或脊柱或脊柱)和(AVM或动静脉畸形或动静脉畸形)和(放射组学或放射基因组学或机器学习或人工智能或深度学习或计算机辅助检测或计算机辅助预测或计算机辅助治疗决策).计算所有纳入研究的影像组学质量评分(RQS)。
    纳入了13项研究,本质上都是回顾性的。三项研究(23%)涉及AVM诊断和分级,1项研究(8%)衡量治疗反应,8(62%)预测结果,最后一个(8%)解决了预后。没有任何影像组学模型经过外部验证。平均RQS为15.92(范围:10-18)。
    我们证明了目前正在AVM管理的不同方面研究影像组学。虽然还没有准备好临床使用,影像组学是一个迅速兴起的领域,有望在未来的医学成像中发挥重要作用。需要更多的前瞻性研究来确定影像组学在诊断中的作用,合并症的预测,以及AVM管理中的治疗选择。
    UNASSIGNED: Arteriovenous malformations (AVMs) are rare vascular anomalies involving a disorganization of arteries and veins with no intervening capillaries. In the past 10 years, radiomics and machine learning (ML) models became increasingly popular for analyzing diagnostic medical images. The goal of this review was to provide a comprehensive summary of current radiomic models being employed for the diagnostic, therapeutic, prognostic, and predictive outcomes in AVM management.
    UNASSIGNED: A systematic literature review was conducted according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) 2020 guidelines, in which the PubMed and Embase databases were searched using the following terms: (cerebral OR brain OR intracranial OR central nervous system OR spine OR spinal) AND (AVM OR arteriovenous malformation OR arteriovenous malformations) AND (radiomics OR radiogenomics OR machine learning OR artificial intelligence OR deep learning OR computer-aided detection OR computer-aided prediction OR computer-aided treatment decision). A radiomics quality score (RQS) was calculated for all included studies.
    UNASSIGNED: Thirteen studies were included, which were all retrospective in nature. Three studies (23%) dealt with AVM diagnosis and grading, 1 study (8%) gauged treatment response, 8 (62%) predicted outcomes, and the last one (8%) addressed prognosis. No radiomics model had undergone external validation. The mean RQS was 15.92 (range: 10-18).
    UNASSIGNED: We demonstrated that radiomics is currently being studied in different facets of AVM management. While not ready for clinical use, radiomics is a rapidly emerging field expected to play a significant future role in medical imaging. More prospective studies are warranted to determine the role of radiomics in the diagnosis, prediction of comorbidities, and treatment selection in AVM management.
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