Product Images Trispec Pse Pediatric Drops Cough Suppressant Expectorant Nasal Decongestant Grape Flavor

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Product Label Images

The following 2 images provide visual information about the product associated with Trispec Pse Pediatric Drops Cough Suppressant Expectorant Nasal Decongestant Grape Flavor NDC 58238-230 by Deliz Pharmaceutical Corp, 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.

Trispec PSE Pediatric Drops Labeling 1 - Trispec PSE Pediatric Drops Labeling 1

Trispec PSE Pediatric Drops Labeling 1 - Trispec PSE Pediatric Drops Labeling 1

Trispec PSE Pediatric Drops Labeling 2 - Trispec PSE Pediatric Drops Labeling 2

Trispec PSE Pediatric Drops Labeling 2 - Trispec PSE Pediatric Drops Labeling 2

This is a medication that is temporarily used to relieve cough attributed to minor throat and bronchial irritation associated with a cold or inhaled irritants. It helps in loosening mucus and thinning bronchial secretions which can help make coughs productive. It also provides temporary relief from nasal congestion. Specific warnings are given regarding the use of this medication for individuals taking certain prescription drugs, those with high blood pressure, thyroid disease, diabetes, etc. Users are cautioned not to exceed the recommended dosage and to limit use if cough persists or is accompanied by fever, rash, or persistent headache. This medication should be kept out of reach of children and users are urged to seek medical help in case of overdose or serious side effects. The product contains specific drug facts, dosages and instructions to be followed. The medication should be stored at room temperature, and for any questions regarding the product, its usage, and potential side effects, users are instructed to contact the phone number provided.*

* 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.