Besga Ariadna, Gonzalez Itxaso, Echeburua Enrique, Savio Alexandre, Ayerdi Borja, Chyzhyk Darya, Madrigal Jose L M, Leza Juan C, Graña Manuel, Gonzalez-Pinto Ana Maria
Department of Psychiatry, University Hospital of Alava-Santiago , Vitoria , Spain ; Centre for Biomedical Research Network on Mental Health (CIBERSAM) , Madrid , Spain ; School of Medicine, University of the Basque Country , Vitoria , Spain.
Department of Psychiatry, University Hospital of Alava-Santiago , Vitoria , Spain ; Centre for Biomedical Research Network on Mental Health (CIBERSAM) , Madrid , Spain ; School of Psychology, University of the Basque Country , San Sebastian , Spain.
Front Aging Neurosci. 2015 Dec 14;7:231. doi: 10.3389/fnagi.2015.00231. eCollection 2015.
Late onset bipolar disorder (LOBD) is often difficult to distinguish from degenerative dementias, such as Alzheimer disease (AD), due to comorbidities and common cognitive symptoms. Moreover, LOBD prevalence in the elder population is not negligible and it is increasing. Both pathologies share pathophysiological neuroinflammation features. Improvements in differential diagnosis of LOBD and AD will help to select the best personalized treatment.
The aim of this study is to assess the relative significance of clinical observations, neuropsychological tests, and specific blood plasma biomarkers (inflammatory and neurotrophic), separately and combined, in the differential diagnosis of LOBD versus AD. It was carried out evaluating the accuracy achieved by classification-based computer-aided diagnosis (CAD) systems based on these variables.
A sample of healthy controls (HC) (n = 26), AD patients (n = 37), and LOBD patients (n = 32) was recruited at the Alava University Hospital. Clinical observations, neuropsychological tests, and plasma biomarkers were measured at recruitment time.
We applied multivariate machine learning classification methods to discriminate subjects from HC, AD, and LOBD populations in the study. We analyzed, for each classification contrast, feature sets combining clinical observations, neuropsychological measures, and biological markers, including inflammation biomarkers. Furthermore, we analyzed reduced feature sets containing variables with significative differences determined by a Welch's t-test. Furthermore, a battery of classifier architectures were applied, encompassing linear and non-linear Support Vector Machines (SVM), Random Forests (RF), Classification and regression trees (CART), and their performance was evaluated in a leave-one-out (LOO) cross-validation scheme. Post hoc analysis of Gini index in CART classifiers provided a measure of each variable importance.
Welch's t-test found one biomarker (Malondialdehyde) with significative differences (p < 0.001) in LOBD vs. AD contrast. Classification results with the best features are as follows: discrimination of HC vs. AD patients reaches accuracy 97.21% and AUC 98.17%. Discrimination of LOBD vs. AD patients reaches accuracy 90.26% and AUC 89.57%. Discrimination of HC vs LOBD patients achieves accuracy 95.76% and AUC 88.46%.
It is feasible to build CAD systems for differential diagnosis of LOBD and AD on the basis of a reduced set of clinical variables. Clinical observations provide the greatest discrimination. Neuropsychological tests are improved by the addition of biomarkers, and both contribute significantly to improve the overall predictive performance.
由于合并症和常见的认知症状,晚发性双相情感障碍(LOBD)常常难以与退行性痴呆,如阿尔茨海默病(AD)相区分。此外,老年人群中LOBD的患病率不可忽视且呈上升趋势。这两种病症都具有病理生理神经炎症特征。改善LOBD和AD的鉴别诊断将有助于选择最佳的个性化治疗方案。
本研究的目的是评估临床观察、神经心理学测试以及特定血浆生物标志物(炎症和神经营养)在LOBD与AD鉴别诊断中各自及联合的相对重要性。通过基于这些变量的基于分类的计算机辅助诊断(CAD)系统来评估所取得的准确性。
在阿拉瓦大学医院招募了健康对照(HC)样本(n = 26)、AD患者样本(n = 37)和LOBD患者样本(n = 32)。在招募时测量临床观察、神经心理学测试和血浆生物标志物。
我们应用多变量机器学习分类方法来区分研究中的HC、AD和LOBD人群的受试者。对于每个分类对比,我们分析了结合临床观察、神经心理学测量和生物标志物(包括炎症生物标志物)的特征集。此外,我们分析了包含通过韦尔奇t检验确定具有显著差异的变量的简化特征集。此外,应用了一系列分类器架构,包括线性和非线性支持向量机(SVM)、随机森林(RF)、分类与回归树(CART),并在留一法(LOO)交叉验证方案中评估它们的性能。对CART分类器中的基尼指数进行事后分析,提供了每个变量重要性的度量。
韦尔奇t检验发现一种生物标志物(丙二醛)在LOBD与AD对比中有显著差异(p < 0.001)。具有最佳特征的分类结果如下:区分HC与AD患者的准确率达到97.21%,曲线下面积(AUC)为98.17%。区分LOBD与AD患者的准确率达到90.26%,AUC为89.57%。区分HC与LOBD患者的准确率达到95.76%,AUC为88.46%。
基于一组简化的临床变量构建用于LOBD和AD鉴别诊断的CAD系统是可行的。临床观察提供了最大的鉴别力。添加生物标志物可改善神经心理学测试,二者都对提高整体预测性能有显著贡献。