Nava Blanco Miguel Ángel, Castañón Ávila Gerardo Antonio
School of Engineering and Science, Tecnologico de Monterrey, Ave. Eugenio Garza Sada 2501, Monterrey 64849, Mexico.
Sensors (Basel). 2025 Jun 18;25(12):3792. doi: 10.3390/s25123792.
Early detection and continuous monitoring of diseases are critical to improving patient outcomes, treatment adherence, and diagnostic accuracy. Traditional melanoma diagnosis relies primarily on visual assessment and biopsy, with reported accuracies ranging from 50% to 90% and significant inter-observer variability. Among emerging diagnostic technologies, Raman spectroscopy has demonstrated considerable promise for non-invasive disease detection, particularly in early-stage skin cancer identification. A portable, real-time Raman spectroscopy system could significantly enhance diagnostic precision, reduce biopsy reliance, and expedite diagnosis. However, miniaturization of Raman spectrometers for portable use faces significant challenges, including weak signal intensity, fluorescence interference, and inherent trade-offs between spectral resolution and the signal-to-noise ratio. Recent advances in silicon photonics present promising solutions by facilitating efficient light collection, enhancing optical fields via high-index-contrast waveguides, and allowing compact integration of photonic components. This work introduces a numerical analysis of an integrated digital Fourier transform spectrometer implemented on a silicon-nitride (SiN) platform, specifically designed for Raman spectroscopy. The proposed system employs a switch-based digital Fourier transform spectrometer architecture coupled with a single optical power meter for detection. Utilizing a regularized regression method, we successfully reconstructed Raman spectra in the 800 cm to 1800 cm range, covering spectra of both benign and malignant skin lesions. Our results demonstrate the capability of the proposed system to effectively differentiate various skin cancer types, highlighting its feasibility as a non-invasive diagnostic sensor.
疾病的早期检测和持续监测对于改善患者预后、治疗依从性和诊断准确性至关重要。传统的黑色素瘤诊断主要依赖于视觉评估和活检,报告的准确率在50%至90%之间,且观察者之间存在显著差异。在新兴的诊断技术中,拉曼光谱在非侵入性疾病检测方面显示出了巨大的潜力,特别是在早期皮肤癌的识别中。便携式实时拉曼光谱系统可以显著提高诊断精度,减少对活检的依赖,并加快诊断速度。然而,用于便携式的拉曼光谱仪的小型化面临着重大挑战,包括信号强度弱、荧光干扰以及光谱分辨率和信噪比之间的固有权衡。硅光子学的最新进展通过促进高效光收集、通过高折射率对比度波导增强光场以及允许光子组件的紧凑集成,提供了有前景的解决方案。这项工作介绍了一种在氮化硅(SiN)平台上实现的集成数字傅里叶变换光谱仪的数值分析,该光谱仪专门为拉曼光谱设计。所提出的系统采用基于开关的数字傅里叶变换光谱仪架构,并结合一个单光功率计进行检测。利用正则化回归方法,我们成功地重建了800 cm至1800 cm范围内的拉曼光谱,涵盖了良性和恶性皮肤病变的光谱。我们的结果证明了所提出的系统能够有效区分各种皮肤癌类型,突出了其作为非侵入性诊断传感器的可行性。