Openpyxl supports converting an entire worksheet of an excel 2010 workbook to a pandas dataframe. I want to select a subset of those cells, using Excel's native indices, and convert that block of cells to a dataframe. Openpyxl's documentation on working with pandas does not help: https://openpyxl.readthedocs.io/en/stable/pandas.html

I am trying to avoid 1) Looping through all rows and columns in the data, since that's inefficient 2) removing this cells from the dataframe after creation instead, and 3) Pandas' read_excel module, since it does not seem to support specifying the range in Excel's native indices.

```
#This converts an entire workbook to a pandas dataframe
import pandas as pd
import openpyxl as px
Work_Book = px.load_workbook(filename='MyBook.xlsx')
Work_Sheet = Work_Book['Sheet1']
df = pd.DataFrame(Work_Sheet.values)
#This produces a tuple of cells. Calling pd.DataFrame on it returns
#"ValueError: DataFrame constructor not properly called!"
Cell_Range = Work_Sheet['B2:D4']
#This is the only way I currently know to convert Cell_Range to a Pandas
# DataFrame. I'm trying to avoid these nested loops.
row_list = []
for row in Cell_Range:
col_list = []
for col in row:
col_list.append(col.value)
row_list.append(col_list)
df = pd.DataFrame(row_list)
```

I am trying to find the most efficient way to convert the Cell_Range object above into a pandas dataframe. Thanks!