Esto logra lo que quieres, y funciona con cualquiera cantidad de `Zone1`, `Zone2`, ..., `ZoneN`: import pandas as pd d = {"ID": [1,1,3,3,5], "Zone1": ["R5B","C2","C2","C1","M1-5"], "Valor1": [10,20,4,8,6], "Zone2": ["C2","M2-6","C4","0","M2-6"], "Valor2": [20,6,6,0,15], "Zone3": ["R10A","R5B","0","0","0"], "Valor3": [5,3,0,0,0]} df = pd.DataFrame(data=d) headers = list(df) headers.sort() valors = [h for h in headers if h.startswith("Valor")] zones = [h for h in headers if h.startswith("Zone")] rc = ["R","C"] m = ["M"] # Si ZonaX empieza por 'R' o 'C', sumará ValorX df["total"] = sum(df[zone].str[0].isin(rc) * df[valor] for zone, valor in zip(zones, valors)) # Si ZonaX empieza por 'M', sumará ValorX df["total1"] = sum(df[zone].str[0].isin(m) * df[valor] for zone, valor in zip(zones, valors)) <! > print(df) ID Zone1 Valor1 Zone2 Valor2 Zone3 Valor3 total total1 0 1 R5B 10 C2 20 R10A 5 35 0 1 1 C2 20 M2-6 6 R5B 3 23 6 2 3 C2 4 C4 6 0 0 10 0 3 3 C1 8 0 0 0 0 8 0 4 5 M1-5 6 M2-6 15 0 0 0 21