Rabinovici-Cohen Simona, Fridman Naomi, Weinbaum Michal, Melul Eli, Hexter Efrat, Rosen-Zvi Michal, Aizenberg Yelena, Porat Ben Amy Dalit
IBM Research-Israel, Mount Carmel, Haifa 3498825, Israel.
TIMNA-Big Data Research Platform Unit, Ministry of Health, Jerusalem 9446724, Israel.
Cancers (Basel). 2024 Feb 29;16(5):1019. doi: 10.3390/cancers16051019.
Oral squamous cell carcinoma (OSCC) accounts for more than 90% of oral malignancies. Despite numerous advancements in understanding its biology, the mean five-year survival rate of OSCC is still very poor at about 50%, with even lower rates when the disease is detected at later stages. We investigate the use of clinical photographic images taken by common smartphones for the automated detection of OSCC cases and for the identification of suspicious cases mimicking cancer that require an urgent biopsy. We perform a retrospective study on a cohort of 1470 patients drawn from both hospital records and online academic sources. We examine various deep learning methods for the early detection of OSCC cases as well as for the detection of suspicious cases. Our results demonstrate the efficacy of these methods in both tasks, providing a comprehensive understanding of the patient's condition. When evaluated on holdout data, the model to predict OSCC achieved an AUC of 0.96 (CI: 0.91, 0.98), with a sensitivity of 0.91 and specificity of 0.81. When the data are stratified based on lesion location, we find that our models can provide enhanced accuracy (AUC 1.00) in differentiating specific groups of patients that have lesions in the lingual mucosa, floor of mouth, or posterior tongue. These results underscore the potential of leveraging clinical photos for the timely and accurate identification of OSCC.
口腔鳞状细胞癌(OSCC)占口腔恶性肿瘤的90%以上。尽管在了解其生物学特性方面取得了诸多进展,但OSCC的平均五年生存率仍然很低,约为50%,在疾病晚期被检测到时生存率更低。我们研究使用普通智能手机拍摄的临床照片对OSCC病例进行自动检测,以及识别疑似癌症需要紧急活检的病例。我们对从医院记录和在线学术来源选取的1470名患者队列进行了回顾性研究。我们研究了各种深度学习方法用于早期检测OSCC病例以及检测可疑病例。我们的结果证明了这些方法在这两项任务中的有效性,能全面了解患者病情。在保留数据上进行评估时,预测OSCC的模型AUC为0.96(置信区间:0.91,0.98),灵敏度为0.91,特异性为0.81。当根据病变位置对数据进行分层时,我们发现我们的模型在区分舌黏膜、口底或舌后部有病变的特定患者组时可以提供更高的准确性(AUC为1.00)。这些结果强调了利用临床照片及时准确识别OSCC的潜力。