Pan Gui-Hai, Zhou Fei, Chen Wu-Biao, Pan Ze-Jun
Department of Radiology, The Affiliated Hospital of Guangdong Medical University, Zhanjiang 524001, Guangdong Province, China.
Department of Endocrinology, The Affiliated Hospital of Guangdong Medical University, Zhanjiang 524001, Guangdong Province, China.
World J Gastrointest Surg. 2024 Sep 27;16(9):2942-2952. doi: 10.4240/wjgs.v16.i9.2942.
Gastrointestinal stromal tumors (GISTs) vary widely in prognosis, and traditional pathological assessments often lack precision in risk stratification. Advanced imaging techniques, especially magnetic resonance imaging (MRI), offer potential improvements. This study investigates how MRI imagomics can enhance risk assessment and support personalized treatment for GIST patients.
To assess the effectiveness of MRI imagomics in improving GIST risk stratification, addressing the limitations of traditional pathological assessments.
Analyzed clinical and MRI data from 132 GIST patients, categorizing them by tumor specifics and dividing into risk groups. Employed dimension reduction for optimal imagomics feature selection from diffusion-weighted imaging (DWI), T1-weighted imaging (T1WI), and contrast enhanced T1WI with fat saturation (CE-T1WI) fat suppress (fs) sequences.
Age, lesion diameter, and mitotic figures significantly correlated with GIST risk, with DWI sequence features like sphericity and regional entropy showing high predictive accuracy. The combined T1WI and CE-T1WI fs model had the best predictive efficacy. In the test group, the DWI sequence model demonstrated an area under the curve (AUC) value of 0.960 with a sensitivity of 80.0% and a specificity of 100.0%. On the other hand, the combined performance of the T1WI and CE-T1WI fs models in the test group was the most robust, exhibiting an AUC value of 0.834, a sensitivity of 70.4%, and a specificity of 85.2%.
MRI imagomics, particularly DWI and combined T1WI/CE-T1WI fs models, significantly enhance GIST risk stratification, supporting precise preoperative patient assessment and personalized treatment plans. The clinical implications are profound, enabling more accurate surgical strategy formulation and optimized treatment selection, thereby improving patient outcomes. Future research should focus on multicenter studies to validate these findings, integrate advanced imaging technologies like PET/MRI, and incorporate genetic factors to achieve a more comprehensive risk assessment.
胃肠道间质瘤(GIST)的预后差异很大,传统病理评估在风险分层方面往往缺乏精确性。先进的成像技术,尤其是磁共振成像(MRI),有望改善这一情况。本研究探讨MRI影像组学如何增强GIST患者的风险评估并支持个性化治疗。
评估MRI影像组学在改善GIST风险分层方面的有效性,解决传统病理评估的局限性。
分析132例GIST患者的临床和MRI数据,根据肿瘤具体情况进行分类并分为风险组。采用降维方法从扩散加权成像(DWI)、T1加权成像(T1WI)以及脂肪饱和对比增强T1WI(CE-T1WI)脂肪抑制(fs)序列中进行最佳影像组学特征选择。
年龄、病变直径和有丝分裂象与GIST风险显著相关,DWI序列特征如球形度和区域熵显示出较高的预测准确性。T1WI和CE-T1WI fs联合模型具有最佳的预测效能。在测试组中,DWI序列模型的曲线下面积(AUC)值为0.960,敏感性为80.0%,特异性为100.0%。另一方面,T1WI和CE-T1WI fs联合模型在测试组中的综合表现最为稳健,AUC值为0.834,敏感性为70.4%,特异性为85.2%。
MRI影像组学,尤其是DWI以及T1WI/CE-T1WI fs联合模型,显著增强了GIST风险分层,支持精确的术前患者评估和个性化治疗方案。其临床意义深远,能够制定更准确的手术策略并优化治疗选择,从而改善患者预后。未来研究应聚焦于多中心研究以验证这些发现,整合PET/MRI等先进成像技术,并纳入遗传因素以实现更全面的风险评估。