Feature reduction

特征约简
  • 文章类型: Journal Article
    背景:迄今为止,大多数MRI影像组学研究,即使是多中心的,使用了故意从单一供应商产生的“纯”数据集,单场强扫描仪.这并不反映对AI模型最终可概括性的渴望。因此,我们研究了来自六个不同成像平台的异构数据的影像组学签名的开发。对于乳腺癌的例子,以便为未来在“真实世界”场景中关于影像数据不受特定试验方案控制但反映常规临床实践的影像组学可行性的讨论提供投入。
    方法:156例经病理证实的乳腺癌患者在新辅助化疗和/或手术之前接受了多对比MRI检查。从这些,92名患者被确定为T2加权,扩散加权和对比增强T1加权序列可用,以及关键的临床病理变量。在上述图像类型上绘制了感兴趣的区域,从这些,得出语义和计算的影像组学特征。使用各种方法的分类模型,有和没有递归特征消除,被开发来预测病理性淋巴结状态。分别,我们应用了相同的方法来分析放射学特征所携带的有关原始扫描仪类型和场强的信息。重复,采用10倍交叉验证来验证结果.在并行工作中,使用随机生存森林进行生存建模.
    结果:预测淋巴结状态,仅临床变量的平均交叉验证AUC值为0.735±0.15(SD),0.673±0.16(SD)仅用于放射学特征,和0.764±0.16(SD)用于影像组学和临床特征。对于所检查的不同类别,从影像组学特征预测扫描仪平台产生了非常高的AUC值,介于0.91和1之间,表明节点状态分类任务存在混淆特征。生存分析,给出了19.3%的包外预测误差(仅临床特征),36.9-51.8%(来自图像对比度不同组合的放射学特征),26.7-35.6%(临床+影像组学特征)。
    结论:Radiomic分类模型的预测能力与以前的单一供应商一致,单场强度研究已经从多供应商获得,多场强数据,尽管存在明显的混淆信息。然而,我们的样本量太小,无法获得有用的生存建模结果。
    BACKGROUND: Most MRI radiomics studies to date, even multi-centre ones, have used \"pure\" datasets deliberately accrued from single-vendor, single-field-strength scanners. This does not reflect aspirations for the ultimate generalisability of AI models. We therefore investigated the development of a radiomics signature from heterogeneous data originating on six different imaging platforms, for a breast cancer exemplar, in order to provide input into future discussions of the viability of radiomics in \"real-world\" scenarios where image data are not controlled by specific trial protocols but reflective of routine clinical practice.
    METHODS: One hundred fifty-six patients with pathologically proven breast cancer underwent multi-contrast MRI prior to neoadjuvant chemotherapy and/or surgery. From these, 92 patients were identified for whom T2-weighted, diffusion-weighted and contrast-enhanced T1-weighted sequences were available, as well as key clinicopathological variables. Regions-of-interest were drawn on the above image types and, from these, semantic and calculated radiomics features were derived. Classification models using a variety of methods, both with and without recursive feature elimination, were developed to predict pathological nodal status. Separately, we applied the same methods to analyse the information carried by the radiomic features regarding the originating scanner type and field strength. Repeated, ten-fold cross-validation was employed to verify the results. In parallel work, survival modelling was performed using random survival forests.
    RESULTS: Prediction of nodal status yielded mean cross-validated AUC values of 0.735 ± 0.15 (SD) for clinical variables alone, 0.673 ± 0.16 (SD) for radiomic features only, and 0.764 ± 0.16 (SD) for radiomics and clinical features together. Prediction of scanner platform from the radiomics features yielded extremely high values of AUC between 0.91 and 1 for the different classes examined indicating the presence of confounding features for the nodal status classification task. Survival analysis, gave out-of-bag prediction errors of 19.3% (clinical features only), 36.9-51.8% (radiomic features from different combinations of image contrasts), and 26.7-35.6% (clinical plus radiomics features).
    CONCLUSIONS: Radiomic classification models whose predictive ability was consistent with previous single-vendor, single-field strength studies have been obtained from multi-vendor, multi-field-strength data, despite clear confounding information being present. However, our sample size was too small to obtain useful survival modelling results.
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  • 文章类型: Journal Article
    With the rapid diffusion of Full Laboratory Automation systems, Clinical Microbiology is currently experiencing a new digital revolution. The ability to capture and process large amounts of visual data from microbiological specimen processing enables the definition of completely new objectives. These include the direct identification of pathogens growing on culturing plates, with expected improvements in rapid definition of the right treatment for patients affected by bacterial infections. In this framework, the synergies between light spectroscopy and image analysis, offered by hyperspectral imaging, are of prominent interest. This leads us to assess the feasibility of a reliable and rapid discrimination of pathogens through the classification of their spectral signatures extracted from hyperspectral image acquisitions of bacteria colonies growing on blood agar plates. We designed and implemented the whole data acquisition and processing pipeline and performed a comprehensive comparison among 40 combinations of different data preprocessing and classification techniques. High discrimination performance has been achieved also thanks to improved colony segmentation and spectral signature extraction. Experimental results reveal the high accuracy and suitability of the proposed approach, driving the selection of most suitable and scalable classification pipelines and stimulating clinical validations.
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