Yan Qian, Chen Yubin, Liu Chunsheng, Shi Hexian, Han Mingqian, Wu Zelong, Huang Shanzhou, Zhang Chuanzhao, Hou Baohua
Department of General Surgery, Guangdong Provincial People's Hospital (Guangdong Academy of Medical Sciences), Southern Medical University, Guangzhou, China.
School of Medicine, South China University of Technology, Guangzhou, China.
Front Oncol. 2024 Apr 23;14:1332387. doi: 10.3389/fonc.2024.1332387. eCollection 2024.
Accurate detection of the histological grade of pancreatic neuroendocrine tumors (PNETs) is important for patients' prognoses and treatment. Here, we investigated the performance of radiological image-based artificial intelligence (AI) models in predicting histological grades using meta-analysis.
A systematic literature search was performed for studies published before September 2023. Study characteristics and diagnostic measures were extracted. Estimates were pooled using random-effects meta-analysis. Evaluation of risk of bias was performed by the QUADAS-2 tool.
A total of 26 studies were included, 20 of which met the meta-analysis criteria. We found that the AI-based models had high area under the curve (AUC) values and showed moderate predictive value. The pooled distinguishing abilities between different grades of PNETs were 0.89 [0.84-0.90]. By performing subgroup analysis, we found that the radiomics feature-only models had a predictive value of 0.90 [0.87-0.92] with I = 89.91%, while the pooled AUC value of the combined group was 0.81 [0.77-0.84] with I = 41.54%. The validation group had a pooled AUC of 0.84 [0.81-0.87] without heterogenicity, whereas the validation-free group had high heterogenicity (I= 91.65%, P=0.000). The machine learning group had a pooled AUC of 0.83 [0.80-0.86] with I = 82.28%.
AI can be considered as a potential tool to detect histological PNETs grades. Sample diversity, lack of external validation, imaging modalities, inconsistent radiomics feature extraction across platforms, different modeling algorithms and software choices were sources of heterogeneity. Standardized imaging, transparent statistical methodologies for feature selection and model development are still needed in the future to achieve the transformation of radiomics results into clinical applications.
https://www.crd.york.ac.uk/prospero/, identifier CRD42022341852.
准确检测胰腺神经内分泌肿瘤(PNETs)的组织学分级对患者的预后和治疗至关重要。在此,我们通过荟萃分析研究了基于放射影像的人工智能(AI)模型在预测组织学分级方面的性能。
对2023年9月之前发表的研究进行系统的文献检索。提取研究特征和诊断指标。采用随机效应荟萃分析汇总估计值。通过QUADAS - 2工具进行偏倚风险评估。
共纳入26项研究,其中20项符合荟萃分析标准。我们发现基于AI的模型具有较高的曲线下面积(AUC)值,并显示出中等的预测价值。不同分级PNETs之间的汇总鉴别能力为0.89[0.84 - 0.90]。通过进行亚组分析,我们发现仅放射组学特征模型的预测价值为0.90[0.87 - 0.92],I = 89.91%,而联合组的汇总AUC值为0.81[0.77 - 0.84],I = 41.54%。验证组的汇总AUC为0.84[0.81 - 0.87],无异质性,而无验证组具有高异质性(I = 91.65%,P = 0.000)。机器学习组的汇总AUC为0.83[0.80 - 0.86],I = 82.28%。
AI可被视为检测PNETs组织学分级的潜在工具。样本多样性、缺乏外部验证、成像方式、跨平台放射组学特征提取不一致、不同的建模算法和软件选择是异质性的来源。未来仍需要标准化成像、用于特征选择和模型开发的透明统计方法,以实现放射组学结果向临床应用的转化。