Alekseev Alexander, Yuk Delvin, Lazarev Alexander, Labelle Daizie, Mourokh Lev, Lazarev Pavel
Matur UK Ltd., 5 New Street Square, London EC4A 3TW, UK.
Arion Diagnostics, Inc., 911 Mustang Ct, Petaluma, CA 94954, USA.
Cancers (Basel). 2024 Jun 30;16(13):2422. doi: 10.3390/cancers16132422.
We report the results of X-ray diffraction (XRD) measurements of the dogs' claws and show the feasibility of using this approach for early, non-invasive cancer detection. The obtained two-dimensional XRD patterns can be described by Fourier coefficients, which were calculated for the radial and circular (angular) directions. We analyzed these coefficients using the supervised learning algorithm, which implies optimization of the random forest classifier by using samples from the training group and following the calculation of mean cancer probability per patient for the blind dataset. The proposed algorithm achieved a balanced accuracy of 85% and ROC-AUC of 0.91 for a blind group of 68 dogs. The transition from samples to patients additionally improved the ROC-AUC by 10%. The best specificity and sensitivity values for 68 patients were 97.4% and 72.4%, respectively. We also found that the structural parameter (biomarker) most important for the diagnostics is the intermolecular distance.
我们报告了对狗爪子进行X射线衍射(XRD)测量的结果,并展示了使用这种方法进行早期非侵入性癌症检测的可行性。所获得的二维XRD图案可以用傅里叶系数来描述,这些系数是针对径向和圆周(角度)方向计算得出的。我们使用监督学习算法分析了这些系数,这意味着通过使用来自训练组的样本优化随机森林分类器,并随后计算盲数据集每位患者的平均癌症概率。对于68只狗的盲组,所提出的算法实现了85%的平衡准确率和0.91的ROC-AUC。从样本到患者的转换额外将ROC-AUC提高了10%。68位患者的最佳特异性和敏感性值分别为97.4%和72.4%。我们还发现,对于诊断最重要的结构参数(生物标志物)是分子间距离。