Product Images Feelshion Dark Spot Remover Serum
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Product Label Images
The following 2 images provide visual information about the product associated with Feelshion Dark Spot Remover Serum NDC 85212-0007 by Beijing Junge 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.
Dark Spot Remover Serum - 20250219 114308

The text indicates the description of a Dark Spot Correcting Serum by FEELSHION. It is formulated to brighten and even out skin tone, fade dark spots and hyperpigmentation, hydrate and nourish the skin, and inhibit melanin production. The serum contains ingredients such as Ascorbic Acid, Glutathione, Alpha-Arbutin, Niacinamide, among others. Precautions are given to avoid direct eye contact, discontinue use in case of irritation, and use sunscreen during the day. The serum is recommended for daily use for 2-4 weeks for best results and should not be applied on broken or irritated skin. Available in a 20 ml bottle, it is advised to perform a patch test before use and store in a cool, dry place away from direct sunlight.*
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This text provides detailed information about a Dark Spot Correcting Serum from FEELSHION. It includes instructions for use, ingredients, precautions, benefits, and contact details. The serum is designed to brighten and even out skin tone, fade dark spots and hyperpigmentation, and hydrate the skin for a glowing complexion. It is recommended for all skin types and contains ingredients like Ascorbic Acid, Glutathione, Alpha-Arbutin, and Niacinamide. The serum is meant for external use only, and precautions such as avoiding direct eye contact, discontinuing use in case of irritation, and using sunscreen are advised. The product packaging contains a 20ml bottle of serum.*
* 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.