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Explorative analysis of IPA IPA ‐ SPECT SPECT data through statistical inference for an automated diagnosis of glioma tumor

机译:IPA IPA - SPECT SPECT数据通过统计推断对胶质瘤肿瘤自动诊断的探索性分析

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Purpose The identification of a brain tumor imaged with PET or SPECT is usually performed with visual inspection of an expert medical clinician. However an automated diagnostic of such images hasn't been established or applied. In this study, we explored the possibility of establishing an automated statistical analysis for the diagnosis of glioma by means of IPA ‐ SPECT data. Methods On the basis of a dataset of 100 patients that have undergone MRI and IPA ‐ SPECT acquisition, in this work, we identify an automated workflow. Three different approaches were explored: I. statistical non‐parametric mapping analysis (Sn PM ), II . statistical non‐parametric analysis with an increased number of permutations due to sign‐flipping function ( PALM ) and III . statistical parametric analysis ( SPM ). The automated methods were compared with the visual inspection. Results The study proved PALM and SPM approaches to have a high diagnostic power. Compared to the parametric methods, the non‐parametric method is the mathematically correct approach for the problem in question. If we take the high resolution structural MRI information into account, the diagnostic power of PALM was not significantly inferior to the visual inspection ( P ?=?0.5150), showing an area under the ROC curve ( AUC ) smaller only by less than 3%. Conclusions The automated diagnostic method based on statistical inference, here applied to diagnose glioma tumors in IPA ‐ SPECT data, seems to be a promising tool that can support the visual investigation in nuclear medicine. Moreover in the foreseeable future, the presented methodology has a big potential in various application like localization of active tumor tissues in surgical resection or stereotactic radiosurgery.
机译:目的,鉴定与PET或SPECT成像的脑肿瘤的鉴定通常通过专家医疗临床医生的目视检查进行。然而,尚未建立或应用此类图像的自动诊断。在这项研究中,我们探讨了通过IPA - SPECT数据建立对胶质瘤诊断的自动统计分析的可能性。方法基于100名患者的数据集,该患者经历了MRI和IPA - SPECT获取,在这项工作中,我们确定了自动化工作流程。探索了三种不同的方法:I。统计非参数映射分析(SN PM),II。由于标志翻转功能(Palm)和III,具有增加的排列数量增加的统计非参数分析。统计参数分析(SPM)。将自动化方法与视觉检查进行比较。结果研究被证明是掌心和SPM方法具有高诊断能力。与参数方法相比,非参数方法是有问题问题的数学上正确的方法。如果我们考虑到高分辨率结构MRI信息,Palm的诊断功能并不明显到视觉检查(P?= 0.5150),显示ROC曲线(AUC)下的区域才小于3% 。结论基于统计推断的自动诊断方法在此应用于诊断IPA - SPECT数据中的胶质瘤肿瘤,似乎是一个有前途的工具,可以支持核医学的视觉调查。此外,在可预见的未来,所呈现的方法在外科切除或立体定向放射牢期中的各种应用中的各种应用中具有很大的潜力。

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