Product Images Safe Sea Sunscreen With Jellyfish Sting Protective Spf 30

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The following 2 images provide visual information about the product associated with Safe Sea Sunscreen With Jellyfish Sting Protective Spf 30 NDC 65435-0131 by Nidaria Technology 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.

Safe Sea SPF 30 A - SafeSeaSPF30A

Safe Sea SPF 30 A - SafeSeaSPF30A

Sunscreen SPF 30 With Jellyfish Sting Protective Lotion is a scientifically developed skincare product that can help prevent stings from most jellyfish, sea nettle, sea lice, and seabathers eruption. It provides UVA&UVB protection for sensitive skin and is water-resistant. The active ingredients include Octinoxate 7.5%, Octisalate 5%, Oxybenzone 3%, and Titanium Dioxide 2%, a drug formula that helps prevent sunburn. The product is easy to apply and retains SPF after 80 minutes of activity in water or sweating. The directive advises coverage of all exposed areas 10 minutes before sun or water exposure, reapplying after prolonged swimming and towel drying. This product should not be deemed a recommendation to go into jellyfish infested water, nor is it a guarantee against stings. In case of sting, do not use Safe Sea as a treatment but seek medical attention. Other ingredients include Deionized Water, Ceresine, Plankton extract, Fragrance, and Calcium Chloride. Distributed by Nidaria Technology Ltd, Sunscreen SPF 30 With Jellyfish Sting Protective Lotion is made in Israel and patented in the US.*

Safe Sea SPF 30 B - SafeSeaSPF30B

Safe Sea SPF 30 B - SafeSeaSPF30B

This is a sunscreen lotion that offers protection against jellyfish stings and sea lice while providing UVA and UVB protection. It is water-resistant and comes in a 4fl. oz. (118 ml) bottle.*

* 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.