论文标题
ANET:基于自动编码器的局部现场潜在特征提取器,用于在施用Kratom叶提取物后评估小鼠的抗抑郁作用
ANet: Autoencoder-Based Local Field Potential Feature Extractor for Evaluating An Antidepressant Effect in Mice after Administering Kratom Leaf Extracts
论文作者
论文摘要
kratom(KT)通常发挥抗抑郁(AD)效应。但是,评估哪种形式的KT提取物具有类似于标准AD氟西汀(流感)的AD特性仍然具有挑战性。在这里,我们采用了称为ANET的基于自动编码器(AE)的异常检测器,以衡量响应KT休假提取物和AD流感的小鼠局部场电位(LFP)特征的相似性。响应KT糖浆的功能与对广告流感响应的人的相似性最高,$ 85.62 $ \ pm $ 0.29%。这一发现表明,将KT糖浆用作抑郁剂治疗的替代物质的可行性比KT生物碱和KT水水(这是本研究中的其他候选者)。除了相似性测量外,我们还将ANET用作多任务AE,并评估了与不同KT提取物和AD流感效果相对应的多级LFP响应的性能。此外,我们分别将LFP响应中的潜在特征分别为T-SNE投影和最大平均差异距离。分类结果报告的准确性和F1得分为79.78 $ \ pm $ 0.39%和79.53 $ \ pm $ 0.00%。总而言之,这项研究的结果可能有助于治疗设计设备进行替代物质概况评估,例如在现实世界应用中基于kratom的形式。
Kratom (KT) typically exerts antidepressant (AD) effects. However, evaluating which form of KT extracts possesses AD properties similar to the standard AD fluoxetine (flu) remained challenging. Here, we adopted an autoencoder (AE)-based anomaly detector called ANet to measure the similarity of mice's local field potential (LFP) features that responded to KT leave extracts and AD flu. The features that responded to KT syrup had the highest similarity to those that responded to the AD flu at 85.62 $\pm$ 0.29%. This finding presents the higher feasibility of using KT syrup as an alternative substance for depressant therapy than KT alkaloids and KT aqueous, which are the other candidates in this study. Apart from the similarity measurement, we utilized ANet as a multi-task AE and evaluated the performance in discriminating multi-class LFP responses corresponding to the effect of different KT extracts and AD flu simultaneously. Furthermore, we visualized learned latent features among LFP responses qualitatively and quantitatively as t-SNE projection and maximum mean discrepancy distance, respectively. The classification results reported the accuracy and F1-score of 79.78 $\pm$ 0.39% and 79.53 $\pm$ 0.00%. In summary, the outcomes of this research might help therapeutic design devices for an alternative substance profile evaluation, such as Kratom-based form in real-world applications.