

Tongyi Ren Xin
Overview :
TongYi Ren Xin is a personal health assistant that provides health report queries, symptom inquiries, drug information, and disease inquiries. All content is AI-generated and intended for medical knowledge popularization only. It does not constitute professional medical advice. Users with health concerns should seek medical attention promptly and follow their doctor's instructions.
Target Users :
TongYi Ren Xin can be used in scenarios such as personal health consultation, symptom inquiry, drug guidance, etc.
Use Cases
Use TongYi Ren Xin to query my health report
Learn about my symptoms through TongYi Ren Xin
Get information about a certain drug using TongYi Ren Xin
Features
Health Report Inquiry
Symptom Inquiry
Drug Information Inquiry
Disease Inquiry
Traffic Sources
Direct Visits | 83.76% | External Links | 11.31% | 0.04% | |
Organic Search | 4.82% | Social Media | 0.03% | Display Ads | 0.04% |
Latest Traffic Situation
Monthly Visits | 5823.60k |
Average Visit Duration | 221.84 |
Pages Per Visit | 2.76 |
Bounce Rate | 37.13% |
Total Traffic Trend Chart
Geographic Traffic Distribution
Monthly Visits | 5823.60k |
China | 92.49% |
Hong Kong | 2.48% |
Taiwan | 1.39% |
United States | 1.19% |
Singapore | 1.00% |
Global Geographic Traffic Distribution Map
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