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House Prices > Birmingham > B45 > Orchard Croft
Breaking Down House Prices on Orchard Croft
Price Breakdown: Orchard Croft and Surrounding Areas
Cofton Hackett
Cofton Hackett gives you more bang for your buck - homes are 32% cheaper than on Orchard Croft. (£339,600 vs £500,300) Factoring this in, homes in Cofton Hackett typically reduce the expected spend by £160,700 versus Orchard Croft.
B45 8
On average, homes in B45 8 leave you with 25% more breathing room than Orchard Croft. (£374,100 vs £500,300) These findings imply that homes on Orchard Croft typically cost £126,200 more than sector averages.
i.e. B45
Buying on Orchard Croft could cost you roughly 43% more than snapping up a property in the B45 district. (£287,100 vs £500,300). Overall, this premium could mean spending an additional £213,200 if purchasing on Orchard Croft.
i.e. Birmingham
In comparison to Orchard Croft, Birmingham has average property prices that are 45% lower. (£277,000 vs £500,300). So before locking in Orchard Croft, know that you're likely paying £223,800 for the name alone.
A Closer Look at B45
We don’t display prices blindly. Instead, we sharpen them with corrections tailored to size, build and local trends. See how we fine-tune the data