"This table is going to contain millions of records say around 30M"
This is one crucial piece of information but a couple of other key stats are missing. How many rows match the status of 'PR','SB' and 'AC' ? How many rows have
new_item_id populated? Are those columns indexed?
You 'select * from x1' in your sub-queries. SELECT * is bad practice, a bug-waiting to happen. However it is disastrous here, because you don't use any of the columns, but you're forcing the database to read the entire row for each entry in the result-sets. The longer the rows the more expensive that is. In the sub-query you really should be driving off just indexes if you can possibly do so.
Ideally, you would have a index on X1 ( STATUS, NEW_ITEM_ID, ITEM_ID, JOB_ID ). Then you wouldn't hit the table at all. But at the very least you need an index on (STATUS, NEW_ITEM_ID). An index just on STATUS won't do you any good unless STATUS is highly selective - several hundred different values, evenly distributed. (Which seems unlikely: in my experience most status columns have a handful of different states_.
Your posted query hits table X1 three times; that will take ages. So the main thing is to reduce the number of times you hit the table. This is where sub-query factoring can help:
with data as ( select job_id, new_item_id, item_id, status
where status in ('PR','SB', 'AC' )
and new_item_id is not null )
from data t1
, data t2
where t1.status = 'AC'
and t2.status in ( 'PR','SB' )
abd (t2.new_item_id in ( t1.new_item_id, t1.item_id )
or t2.item_id in ( t1.new_item_id, t1.item_id ) )
So this query hits the table only once, and with a favourable index not even once.
If the query still takes too much time - or you can't wangle a helpful index - the other option for improving execution times against massive tables is parallel query. This option is open to you if you have an Enterprise Edition license and a server with sufficient CPUs (and both those conditions should be true if you want to run an application database with multi-million row tables_.
with data as ( select /*+ parallel (x1, 4) */
job_id, new_item_id, item_id, status