I've been using rpy2 to calculate the mahalanobis distance between a test vector and a prior distribution. I'd like to drop rpy2 and move to scipy, but when I test it, rpy2 and scipy don't return the same result. Here's my sample code.

```
import numpy as np
from scipy import linalg
from scipy.spatial.distance import mahalanobis as mahalanobis
import rpy2.robjects as robjects
# The vector to test.
test_values = [692.5816522801106, 1421.4737901031651, 6.117859, 7.259449]
test_values_r = robjects.FloatVector(test_values)
test_values_np = np.array(test_values)
# The covariance matrix from the prior distribution
covs = [15762.87, 13486.23, 34.61164, 22.15451,
13486.23, 36003.67, 33.8431, 30.52712,
34.61164, 33.8431, 0.4143354, 0.1125765,
22.15451, 30.52712, 0.1125765, 0.2592451]
covs_np = np.reshape(np.array(covs), (4,-1))
covs_r = robjects.r["matrix"](robjects.FloatVector(covs), nrow = 4)
# The means of the prior distribution
centers = [808.0645, 1449.711, 4.8443, 4.95776]
centers_np = np.array(centers)
centers_r = robjects.FloatVector(centers)
r_dist = robjects.r["mahalanobis"](test_values_r, centers_r, covs_r)
# <FloatVector - Python:0x1052275a8 / R:0x10701bfa8>
# [29.782287]
np_dist = mahalanobis(test_values_np, centers_np, linalg.inv(covs_np))
# 5.4573150053873185
```

Am I missing something obvious?