Clinical Pharmacy and Healthcare Sciences, Faculty of Pharmacy, Institute of Medical, Pharmaceutical and Health Sciences, Kanazawa University.
AI Hospital/Macro Signal Dynamics Research and Development Center, Institute of Medical, Pharmaceutical and Health Sciences, Kanazawa University.
Biol Pharm Bull. 2021;44(5):691-700. doi: 10.1248/bpb.b20-01041.
There are many reports of falsified medicines that may cause harm to patients. A rapid and simple method of identifying falsified medicines that could be used in the field is required. Although Raman scattering spectroscopy has become popular as a non-destructive analysis, few validation experiments on falsified medicines that are actually distributed on the market have been conducted. In this study, we validated a discriminant analysis using an ultra-compact, portable, and low-cost Raman scattering spectrometer combined with multivariate analysis. The medicines were three types of erectile dysfunction therapeutic tablet and one type of antifungal tablet: tadalafil (Cialis), vardenafil hydrochloride (Levitra), sildenafil citrate (Viagra), and fluconazole (Diflucan), which is sometimes advertised as female Viagra. For each medicine, the authentic standard product and products obtained by personal import via the internet (genuine or falsified) were used. Discriminant analyses were performed on the Raman spectra combined with soft independent modeling of class analogy (SIMCA) and partial least squares discriminant analysis (PLS-DA). It was possible to identify all falsified samples by SIMCA using the standard product model for all four products. Using the PLS-DA using the PLS models of the four standard products, falsified Levitra and Diflucan samples were classified correctly, although some falsified Cialis and all Viagra samples also belonged to the standard class. In this study, SIMCA might be more suitable than PLS-DA for identifying falsified medicines. A spectroscopic module that combines the low-cost Raman scattering spectroscopy with SIMCA might contribute to the rapid identification of falsified medicines in the field.
有许多关于假药的报道,这些假药可能会对患者造成伤害。因此,需要一种快速、简单的方法来识别假药,这种方法最好还能在现场使用。虽然拉曼散射光谱学已成为一种非破坏性分析方法而受到广泛关注,但针对市面上实际流通的假药,相关验证实验却很少。在这项研究中,我们结合多元分析,验证了一种使用超紧凑、便携式且低成本拉曼散射光谱仪的判别分析。所研究的药品有三种勃起功能障碍治疗片剂和一种抗真菌片剂:他达拉非(希爱力)、盐酸伐地那非(艾力达)、枸橼酸西地那非(万艾可)和氟康唑(大扶康),后者有时被宣传为女性伟哥。对于每种药物,都使用了正品标准产品和通过互联网个人进口(正品或假药)获得的产品。对拉曼光谱进行了判别分析,并结合软独立建模分类分析(SIMCA)和偏最小二乘判别分析(PLS-DA)进行了分析。通过对所有四种产品的标准产品模型进行 SIMCA 分析,能够识别出所有假药样本。通过对四种标准产品的 PLS 模型进行 PLS-DA 分析,能够正确分类出假药艾力达和大扶康样本,尽管一些假药希爱力和所有伟哥样本也属于标准类别。在这项研究中,SIMCA 可能比 PLS-DA 更适合识别假药。将低成本拉曼散射光谱学与 SIMCA 相结合的光谱学模块可能有助于在现场快速识别假药。