🇺🇸4TH OF JULY EXCLUSIVE: GET 10% OFF SELECT BRANDS! USE CODE: TSM10
CLAIM DEAL NOW ➔

Nitto Mud Grappler 38/15.50R20 125Q Mud Terrain Light Truck Tires

⚡ Price Comparison Summary:

Weekly updated prices from top retailers 2 retailers, the cheapest price for the Nitto Mud Grappler 38/15.50R20 125Q Mud Terrain Light Truck Tires is currently $661.00 at Tire Agent.

$661.00

Fast & FREE Delivery Direct to your door or to 10,000+ local installers.

Compare Best Prices

Tire Agent
$661.00
SimpleTire
$672.99
Amazon
$ ???
SKU: 200510 Categories: , Brand:

Unleash the beast with the Nitto Mud Grappler 38/15.50R20 125Q Mud Terrain Light Truck Tire, part number 200510. Engineered for extreme off-road enthusiasts, this tire is purpose-built to conquer the most challenging terrains, from deep mud to jagged rocks, making it the ultimate choice for your lifted truck or SUV.

Experience unparalleled performance where the pavement ends. The robust tread design provides exceptional grip and traction in wet, muddy, or loose dry conditions, while the reinforced sidewalls enhance handling precision and stability during aggressive cornering and crawling maneuvers. You’ll maintain confident control even in the most demanding off-road scenarios.

Designed for durability, the Nitto Mud Grappler features a robust compound that resists chipping and tearing, ensuring a long tread life even under harsh use. This tire is a true all-season performer for off-road environments, ready to tackle any adventure year-round.

Despite its aggressive nature, advanced construction helps mitigate road noise, providing a surprisingly tolerable ride for a mud-terrain tire.

Key Features & Specifications

  • Load Index: 125 (3640 lbs)
  • Speed Rating: Q (99 mph)
  • Season Type: All-Season (Off-Road Focus)
  • Tread Pattern: Aggressive Mud Terrain
  • Tire Diameter: 38 inches

Equip your rig with the Nitto Mud Grappler and dominate any trail with unwavering confidence.

✍️ Tire Size Matters Editorial Team
Product information is compiled and reviewed by our editorial team using manufacturer specifications and retailer data.