Liang Ying, Yang Qifu, Wu Jiaquan, Ma Kun, Zhang Xinyu, Ren Huihui, Zhu Hanyu, Peng Xingshuai, Wang Jiateng, Zhang Jianqiang
College of Science, Kunming University of Science and Technology, Kunming 650500, China.
Yunnan Police College, 650000, Kunming, China.
Anal Methods. 2025 Jul 31;17(30):6179-6189. doi: 10.1039/d4ay02167c.
Bloodstains are a prevalent and critical type of forensic evidence at crime scenes. Accurate determination of bloodstain age is essential for crime resolution, and non-destructive spectral methods are instrumental in this process. While extensive research has established the practicality of hyperspectral imaging (HSI) in specific forensic contexts, limited studies have explored near-infrared (NIR) spectroscopy. Owing to its superior penetration capabilities and high sensitivity, NIR holds promise in addressing certain limitations of HSI. This study aims to assess the applicability of NIR spectroscopy for bloodstain age estimation in forensic contexts and to compare its efficacy with HSI.
Bloodstains were aged on various substrates over a 60 day period, with periodic analyses conducted using both spectral methods. Chemometric analysis of the spectral data was performed following SNV preprocessing and application of different regression algorithms. First, linear regression analysis was utilized to determine the effect of material on bloodstain deposition. Under the premise of distinguishing materials, partial least squares (PLS) regression was employed to extract eight latent variables from HSI and NIR spectral data for regression prediction. However, the prediction performance was suboptimal. To address this, polynomial features were introduced into the PLS regression algorithm to capture the nonlinear relationships in the spectral data, and the improved model significantly enhanced the prediction performance. Furthermore, PLS polynomial regression was applied to predict homologous data, and the results also demonstrated favorable performance. Finally, to optimize the prediction accuracy of multimodal data, a multilayer perceptron (MLP) was introduced for regression prediction through multimodal data fusion, further improving the overall performance of the model. Finally, predictive performance was evaluated across models, emphasizing their specific strengths. For homologous data fusion, comparable root mean square errors of prediction (RMSEP) were achieved for HSI and NIR spectra, at 8.35 and 8.15 days, respectively. Similar RMSEP values were observed in multimodal data fusion, and the accuracy of both low-level and intermediate-level fusion methods was evaluated.
HSI and NIR spectroscopy each provide unique advantages in bloodstain detection. Data fusion of these methods helps mitigate external influences, enhancing the approach's general applicability. This integrated method facilitates rapid estimation of bloodstain age at crime scenes, aiding in crime timeline determination and presenting valuable potential for forensic applications.
血迹是犯罪现场常见且关键的一类法医证据。准确确定血迹的形成时间对于破案至关重要,无损光谱方法在这一过程中发挥着重要作用。虽然大量研究已证实高光谱成像(HSI)在特定法医场景中的实用性,但对近红外(NIR)光谱的研究较少。由于其卓越的穿透能力和高灵敏度,NIR有望解决HSI的某些局限性。本研究旨在评估NIR光谱在法医场景中用于估计血迹形成时间的适用性,并将其与HSI的效果进行比较。
在60天的时间内,让血迹在各种基质上老化,并使用两种光谱方法进行定期分析。在进行标准正态变量(SNV)预处理并应用不同回归算法后,对光谱数据进行化学计量分析。首先,利用线性回归分析确定材料对血迹沉积的影响。在区分材料的前提下,采用偏最小二乘法(PLS)回归从HSI和NIR光谱数据中提取八个潜在变量进行回归预测。然而,预测性能并不理想。为了解决这个问题,将多项式特征引入PLS回归算法以捕捉光谱数据中的非线性关系,改进后的模型显著提高了预测性能。此外,应用PLS多项式回归预测同源数据,结果也显示出良好的性能。最后,为了优化多模态数据的预测准确性,引入多层感知器(MLP)通过多模态数据融合进行回归预测,进一步提高了模型的整体性能。最后,对各模型的预测性能进行评估,强调它们的具体优势。对于同源数据融合,HSI和NIR光谱的预测均方根误差(RMSEP)相当,分别为8.35天和8.15天。在多模态数据融合中也观察到类似的RMSEP值,并评估了低级和中级融合方法的准确性。
HSI和NIR光谱在血迹检测中各有独特优势。这些方法的数据融合有助于减轻外部影响,提高该方法的普遍适用性。这种综合方法有助于在犯罪现场快速估计血迹形成时间,有助于确定犯罪时间线,并在法医应用中展现出宝贵的潜力。