I would like to use the 'pandas.concat' method to merge two DataFrames, but I don't fully understand all 'pandas.concat' arguments. I've got two DataFrames, which have the same identifying variables in the columns, but differ in one single column.

```
import pandas as pd
dict_data = {'Treatment': ['C', 'C', 'C'], 'Biorep': ['A', 'A', 'A'], 'Techrep': [1, 1, 1], 'AAseq': ['ELVISLIVES', 'ELVISLIVES', 'ELVISLIVES'], 'mz':[500.0, 500.5, 501.0]}
df_a = pd.DataFrame(dict_data)
dict_data = {'Treatment': ['C', 'C', 'C'], 'Biorep': ['A', 'A', 'A'], 'Techrep': [1, 1, 1], 'AAseq': ['ELVISLIVES', 'ELVISLIVES', 'ELVISLIVES'], 'inte':[1100.0, 1050.0, 1010.0]}
df_b = pd.DataFrame(dict_data)
```

df_a

```
AAseq Biorep Techrep Treatment mz
0 ELVISLIVES A 1 C 500.0
1 ELVISLIVES A 1 C 500.5
2 ELVISLIVES A 1 C 501.0
```

df_b

```
AAseq Biorep Techrep Treatment int
0 ELVISLIVES A 1 C 1100
1 ELVISLIVES A 1 C 1050
2 ELVISLIVES A 1 C 1010
```

I can add the column the following way:

```
df_m = df_a.copy()
df_m['inte'] = df_b['inte']
AAseq Biorep Techrep Treatment inte
0 ELVISLIVES A 1 C 1100
1 ELVISLIVES A 1 C 1050
2 ELVISLIVES A 1 C 1010
```

My real data looks much more complex and I'm afraid that the method above could lead to the wrong order of values in the rows (specially since I want to use 'pandas.melt' beforehand).

When using:

```
dfm = pd.concat([df_a, df_b])
AAseq Biorep Techrep Treatment inte mz
0 ELVISLIVES A 1 C NaN 500.0
1 ELVISLIVES A 1 C NaN 500.5
2 ELVISLIVES A 1 C NaN 501.0
0 ELVISLIVES A 1 C 1100 NaN
1 ELVISLIVES A 1 C 1050 NaN
2 ELVISLIVES A 1 C 1010 NaN
```

The concatenated DataFrame extends the values rowwise leading to NaN vals.

**Question**: How can I achieve the same result (shown above) using 'concat'?

Thank you for your support!