I'd structure the data differently. Are the types of these 50 columns all going to be the same? Since you're using "like", I'm going to assume they are all varchar columns. Why not have 3 tables, 'MyTable', a table with the string data (whatever it may be), and a join table with references to both.
At this point, your query becomes:
from MyTable mt
inner join JoinTable jt
on jt.MyTableId = mt.Id
inner join DataTable dt
on dt.Id = jt.DataTableId
where dt.Data like @Input
Obviously, on SO, we see a lot of answers that are simply, "Your data is structured wrong. Redo it." This is not always the most helpful. If for some reason (bureaucracy around database structure, legacy dependencies on this structure, etc.) you cannot restructure it, you need to realize you're pivoting these columns. At this point you'll need to look at options for pivoting this, which will vary based on how analytical/transactional (read/write heavy) this db is. If you are very read heavy, you might be ok duplicating the data into a pivot table that you update each time you update 'MyTable'. If you're more transactional, a function or view will at least abstract this pivoted structure but the query will be expensive. MS SQL full text search capabilities would work similarly to duplicating the data and updating on inserts and depending on the nature of your "like" queries, may read faster.