Li Jiayan, Bai Lu, Chen Yingna, Cao Junmei, Zhu Jingtao, Zhi Wenxiang, Cheng Qian
Institute of Acoustics, School of Physics Science and Engineering, Tongji University, Shanghai, People's Republic of China.
Department of Ultrasonography, Fudan University Shanghai Cancer Center, Shanghai Medical College, Fudan University, Shanghai, People's Republic of China.
J Biophotonics. 2025 Jan;18(1):e202400371. doi: 10.1002/jbio.202400371. Epub 2024 Nov 26.
Collagen, a key structural component of the extracellular matrix, undergoes significant remodeling during carcinogenesis. However, the important role of collagen levels in breast cancer diagnostics still lacks effective in vivo detection techniques to provide a deeper understanding. This study presents photoacoustic spectral analysis improved by machine learning as a promising non-invasive diagnostic method, focusing on exploring collagen as a salient biomarker. Murine model experiments revealed more profound associations of collagen with other cancer components than in normal tissues. Moreover, an optimal set of feature wavelengths was identified by a genetic algorithm for enhanced diagnostic performance, among which 75% were from collagen-dominated absorption wavebands. Using optimal spectra, the diagnostic algorithm achieved 72% accuracy, 66% sensitivity, and 78% specificity, surpassing full-range spectra by 6%, 4%, and 8%, respectively. The proposed photoacoustic methods examine the feasibility of offering valuable biochemical insights into existing techniques, showing great potential for early-stage cancer detection.
胶原蛋白是细胞外基质的关键结构成分,在致癌过程中会经历显著的重塑。然而,胶原蛋白水平在乳腺癌诊断中的重要作用仍缺乏有效的体内检测技术来提供更深入的理解。本研究提出了通过机器学习改进的光声光谱分析,作为一种有前景的非侵入性诊断方法,重点探索胶原蛋白作为显著生物标志物的作用。小鼠模型实验表明,与正常组织相比,胶原蛋白与其他癌症成分之间的关联更为深刻。此外,通过遗传算法确定了一组优化的特征波长,以提高诊断性能,其中75%来自胶原蛋白主导的吸收波段。使用优化光谱,诊断算法的准确率达到72%,灵敏度达到66%,特异性达到78%,分别比全范围光谱高出6%、4%和8%。所提出的光声方法检验了为现有技术提供有价值的生化见解的可行性,显示出在早期癌症检测方面的巨大潜力。