Product Images Yimimde Pain Relief Gel-patch
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Product Label Images
The following 2 images provide visual information about the product associated with Yimimde Pain Relief Gel-patch NDC 73076-302 by Shenzhen Ishan Technology Co., Ltd, such as packaging, labeling, and the appearance of the drug itself. This resource could be helpful for medical professionals, pharmacists, and patients seeking to verify medication information and ensure they have the correct product.
4pcs pain relief package - 4pcs YIMIMDE pain relief patch V20241127 00(1)
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This is a description of a Lidocaine 4% gel-patch for pain relief measuring 125mm x 170mm. It offers fast-acting relief for back, neck, shoulders, knees, and elbows. The gel-patch contains lidocaine and menthol as active ingredients, providing a cooling sensation for numbing pain. It is advised to clean and dry the affected area before applying the patch. The product is manufactured by Shenzhen iShan Technology Co., Ltd. and is made in China. It's important to follow the directions for use, store in a clean, dry place, and keep out of reach of children.*
8pcs pain patch - 8pcs YIMIMDE pain relief V20241212 00

This is a description of a lidocaine 4% gel-patch for pain relief. The gel-patch provides fast-acting and targeted pain relief without irritation. It contains active ingredients like Lidocaine and Menthol to numb pain. The patch is suitable for temporary relief of pain in areas such as the back, neck, shoulders, knees, and elbows. The product should be used as directed and precautions should be taken, such as avoiding using more than one patch at a time and not using on wounds or damaged skin. It is advised to consult a doctor for children under 12 years of age and pregnant or breastfeeding individuals should consult a healthcare professional before use. The product is manufactured by Shenzhen iShan Technology Co., Ltd. in China and should be stored in a clean, dry place away from direct sunlight.*
* The product label images have been analyzed using a combination of traditional computing and machine learning techniques. It should be noted that the descriptions provided may not be entirely accurate as they are experimental in nature. Use the information in this page at your own discretion and risk.