Sunny Sumsum P, Chen Jiabin, Wang Yihan, Paulmajumder Bharghabi, Song Bofan, Subhashini A R, Pillai Vijay, Kuriakose Moni A, Birur N Praveen, Suresh Amritha, Liang Rongguang
James C. Wyant College of Optical Sciences, University of Arizona, Tucson AZ, USA.
Department of Head and Neck Oncology, Mazumdar Shaw Medical Center, Bangalore, India.
Biomed Opt Express. 2025 Jul 28;16(8):3415-3423. doi: 10.1364/BOE.569553. eCollection 2025 Aug 1.
Oral cancer remains a significant global health challenge. Early detection is essential for improving prognostic outcomes, yet current diagnostic practices are hindered by the invasive nature of biopsies and the reliance on staining methods. This study presents a low-cost, label-free deep ultraviolet (UV) microscopy system, integrated with artificial intelligence (AI), for analyzing unstained cytology specimens. Leveraging the absorption properties of nuclei under UV light, this technology produces high-resolution molecular images, enabling real-time, automated, and objective analysis of cellular and nuclear morphology. Forty patients with oral lesions-spanning benign, oral potentially malignant disorders (OPMD), and oral squamous cell carcinoma (OSCC)-participated in this study. Cytology nuclei were segmented using a deep learning-based U-Net architecture, and key nuclear features, including intensity, solidity, eccentricity, and axis ratio, were extracted and analyzed. These features demonstrated high sensitivity (>80%) and specificity (>79%) in distinguishing diagnostic groups. Furthermore, unsupervised clustering based on these features effectively classified patient cohorts, underscoring its potential for early diagnosis. The proposed method eliminates the need for staining, reduces processing time, and minimizes environmental impact, making it particularly suited for primary healthcare settings. By integrating advanced imaging with AI, this scalable approach addresses critical gaps in early oral cancer detection, offering significant potential to improve patient outcomes. Validation in larger and more diverse cohorts is required to enhance its clinical utility.
口腔癌仍然是一项重大的全球健康挑战。早期检测对于改善预后结果至关重要,但目前的诊断方法受到活检的侵入性以及对染色方法的依赖的阻碍。本研究提出了一种低成本、无标记的深紫外(UV)显微镜系统,该系统集成了人工智能(AI),用于分析未染色的细胞学标本。该技术利用细胞核在紫外光下的吸收特性,生成高分辨率的分子图像,能够对细胞和细胞核形态进行实时、自动和客观的分析。40名患有口腔病变的患者参与了本研究,这些病变包括良性病变、口腔潜在恶性疾病(OPMD)和口腔鳞状细胞癌(OSCC)。使用基于深度学习的U-Net架构对细胞学细胞核进行分割,并提取和分析包括强度、坚实度、偏心率和轴比在内的关键核特征。这些特征在区分诊断组时表现出高灵敏度(>80%)和高特异性(>79%)。此外,基于这些特征的无监督聚类有效地对患者队列进行了分类,突出了其在早期诊断方面的潜力。所提出的方法无需染色,减少了处理时间,并将环境影响降至最低,使其特别适用于基层医疗环境。通过将先进成像与人工智能相结合,这种可扩展的方法填补了早期口腔癌检测中的关键空白,具有改善患者预后的巨大潜力。需要在更大、更多样化的队列中进行验证,以提高其临床实用性。