Welmate Lidocaine Pain Relieving Patch
Product Images NDC 73581-911

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Product Visual Gallery

This gallery contains 2 technical images submitted to the FDA as part of the official labeling for Welmate Lidocaine Pain Relieving Patch (NDC 73581-911). Unlike standard consumer photos, these assets often include clinical data figures, molecular chemical structures, and official manufacturer packaging layouts.

As provided by Yyba Corp, these visuals offer a comprehensive scientific overview of the product's physical and chemical identity, aiding pharmacists and researchers in product verification and study.

FDA Label Image

Pack (92 45001 1021 Pouch Lidocaine 30ct)

Pack (92 45001 1021 Pouch Lidocaine 30ct)
MAXIMUM STRENGTH Lidocaine Pain Relieving Patch is a targeted pain relief solution that numbs aggravated nerves and relieves pain in the back, neck, shoulder, and legs. The pain relieving patch is easy to apply and remove, with a no-mess, single-use application and stay-put flexible patch. The active ingredient in the patch is Lidocaine. The directions to use are given along with other information about the product. Distributed by Welapring, Armont, NY 10862, USA, the patch has a size of 3.33 inches and contains Benzyl Alcohol.*
FDA Label Image

Label (92 45002 1021 Pkg Lidocaine 30ct)

Label (92 45002 1021 Pkg Lidocaine 30ct)
This is a description for a lidocaine pain-relieving patch manufactured by welmate™. The patch is easy to apply and remove, and it is a no-mess, single-use application. It targets pain relief and includes maximum strength lidocaine for numbing aggravated nerves and relieving pain in the back, neck, shoulder, or leg. There is additional information on the carton and a drug facts section. The product is marketed as a comparison to Salenpas®. It contains active and inactive ingredients as described on the packaging with CAD# 23081 and REF:YYBA 30ct Lidocaine Carton 0.024 8BS.*

* These product label images have been analyzed using experimental machine learning. Please verify findings with the primary label text.