Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
Not provided
| Name | Class |
|---|---|
| Taikang Xianlin Drum Tower Hospital | UNKNOWN |
| Zhongda Hospital | OTHER |
| Affiliated Cixi Hospital of Wenzhou Medical University | OTHER |
| Changzhou Fourth People's Hospital |
Not provided
Not provided
Not provided
Not provided
This study aims to develop and validate a clinical prediction model for the risk of head and neck cancerous lesions using deep learning combined with AI algorithms, based on multi-center clinical data.
Vocal health has emerged as a prominent public health challenge. Phonation relies on precise neuromuscular and respiratory coordination, a physiological process frequently compromised by systemic senescence, multimorbidity, and neuromuscular degeneration. This complex pathophysiological interplay makes it exceedingly difficult to clinically distinguish early-stage laryngeal malignancies from common benign voice disorders (e.g., vocal fold cysts, vocal process granulomas, and Reinke's edema). Because both entities typically present with non-specific hoarseness or globus sensation, the difficulty of early screening and accurate differential diagnosis is substantially amplified.
Currently, the diagnosis of voice disorders relies heavily on laryngoscopy. However, owing to the unequal distribution of medical resources, primary and community care settings generally lack effective screening tools for laryngeal malignancies during initial consultations, often leading to delayed referrals for high-risk patients. Furthermore, there is a profound disparity in endoscopic interpretation expertise across different healthcare tiers. The visual features of certain precancerous lesions (such as dysplastic leukoplakia) and early-stage malignancies overlap considerably, resulting in a high risk of missed diagnoses or unnecessary biopsies of benign lesions. Therefore, systematically incorporating multidimensional indicators-including demographics (e.g., age), smoking and alcohol history, and clinical symptomatology-into risk assessment is crucial for the early detection of malignancies and the optimal allocation of healthcare resources.
In recent years, deep learning-based artificial intelligence (AI) has demonstrated tremendous potential in medical image feature extraction, capable of capturing subtle morphological textures imperceptible to the human eye. However, the oncogenesis and progression of laryngeal malignancies are driven by a confluence of multidimensional factors. When confronted with complex, real-world clinical scenarios, unimodal imaging models often suffer from decreased generalizability and elevated false-positive rates due to the absence of the patient's demographic, symptomatic, and behavioral exposure context. Real-world clinical decision-making is not an isolated image-interpretation task; rather, it requires the systematic integration of visual features with multidimensional clinical metadata. Developing an intelligent diagnostic framework capable of fusing multimodal data is therefore essential to overcome the application bottlenecks of current unimodal AI imaging tools.
Addressing these clinical pain points and technical limitations, this study leveraged a national multicenter cohort encompassing approximately 11,000 patients with voice disorders to develop and validate a two-stage, multimodal AI risk stratification and diagnostic framework. In the first stage, by integrating demographic characteristics, behavioral exposures, and clinical symptomatology, the investigators developed a non-invasive, low-cost Clinical Screening Model. This tool is designed to provide primary care settings and patients with an immediate, efficient early-warning system for malignancies. In the second stage, building upon this initial risk stratification, the investigators employed deep learning algorithms to extract microscopic visual features from endoscopic images, culminating in a Multimodal Diagnostic Model. This model achieves precise multiclass classification among laryngeal malignancies, common benign vocal fold lesions, and normal laryngeal anatomy. Furthermore, the investigators deployed a cloud-based web application to facilitate real-time risk estimation.
Ultimately, by providing this clinical-grade AI diagnostic assistant, this study aims to optimize the hierarchical screening and diagnostic pathways for voice disorders, thereby empowering general practitioners and primary care otolaryngologists to enhance the quality of clinical decision-making and diagnostic accuracy.
Not provided
Not provided
Not provided
Not provided
| Label | Type | Description | Intervention Names |
|---|---|---|---|
| Patients with head and neck malignancies | Comprised patients with histopathologically confirmed head and neck malignant lesions, primarily including laryngeal and hypopharyngeal carcinomas. | ||
| Patients without head and neck malignancies | Consisted of patients absent of malignant findings, encompassing individuals with normal laryngeal anatomy and those diagnosed with benign vocal fold lesions (e.g., polyps, cysts, and nodules). |
Not provided
| Measure | Description | Time Frame |
|---|---|---|
| Laryngoscopic report diagnosis | those data will be collected via medical history records,"The laryngoscopic report diagnosis" primarily consists of detailed diagnostic classifications for various vocal fold and laryngeal pathologies. | During the first outpatient visit (Day 1) |
| Measure | Description | Time Frame |
|---|---|---|
| Demographic data | Demographic data primarily includes demographic characteristics, behavioral habits, medical history, and lifestyle factors. | During the first outpatient visit (Day 1) |
| VHI-10 |
Not provided
Inclusion Criteria:
Age ≥ 18 years old. Patients with complete clinical data information and laryngoscopic images.
Exclusion Criteria:
Refusal to sign the informed consent form. Incomplete clinical data. Known diagnosis of other head and neck malignancies (thyroid cancer, malignant parotid tumors, etc.
Not provided
Not provided
The study cohort comprised outpatients and inpatients from the otolaryngology departments of the participating medical centers, who underwent laryngoscopy primarily for initial presenting symptoms such as pharyngeal discomfort and hoarseness.
| Name | Role | Phone | Extension | |
|---|---|---|---|---|
| junyi Wang, master | Contact | +86 13309609232 | songjiu3411@outlook.com |
Not provided
| Facility | Status | City | State | ZIP | Country | Contacts |
|---|---|---|---|---|---|---|
| Nanjing Drum Tower Hospital | Nanjing | Jiangsu | China |
Raw data will not be directly shared and will only be provided when necessary. All research codes involved in this study will be made publicly available.
Not provided
Not provided
Not provided
Not provided
Not provided
| Type | Includes Protocol | Includes SAP | Includes ICF | Document Label | Document Date | Document Uploaded Date | Document File Name |
|---|---|---|---|---|---|---|---|
| Prot_SAP | Yes | Yes | No | Study Protocol and Statistical Analysis Plan | Jan 26, 2026 | Apr 4, 2026 | Prot_SAP_000.pdf |
| ICF | No | No | Yes | Informed Consent Form | Jan 22, 2026 | Apr 4, 2026 | ICF_001.pdf |
Not provided
| ID | Term |
|---|---|
| D007012 | Hypopharyngeal Neoplasms |
| D007822 | Laryngeal Neoplasms |
| D006258 | Head and Neck Neoplasms |
| ID | Term |
|---|---|
| D010610 | Pharyngeal Neoplasms |
| D010039 | Otorhinolaryngologic Neoplasms |
| D009371 | Neoplasms by Site |
| D009369 | Neoplasms |
Not provided
Not provided
| UNKNOWN |
| Nanjing Tongren Hospital | OTHER |
| Nanjing Children's Hospital | OTHER |
| Gansu Provincial Maternal and Child Health Care Hospital | OTHER |
| Shanghai Putuo District People's Hospital | UNKNOWN |
| Wuxi Huishan District People's Hospital | UNKNOWN |
| Fengyang County Hospital of Traditional Chinese Medicine | UNKNOWN |
| Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine | OTHER |
Not provided
Not provided
Not provided
those data will be collected via questionnaire ,Voice-related quality of life was assessed using the Voice Handicap Index (VHI). Total scores range from 0 to 120. Higher scores indicate greater voice-related daily life handicap (worse outcome).
| During the first outpatient visit(Day 1) |
| D010608 |
| Pharyngeal Diseases |
| D009057 | Stomatognathic Diseases |
| D010038 | Otorhinolaryngologic Diseases |
| D007818 | Laryngeal Diseases |
| D012140 | Respiratory Tract Diseases |
| D012142 | Respiratory Tract Neoplasms |