School Records (Updated 7/6/2021)

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School Records (Updated 7/6/2021) Current School Records (updated 7/6/2021) School Sport Event Current Record Holder Record Date Record Set West Baseball Bases on Balls in Career Chuck Viggato / Chase Chodkowski 31 1961-1963 / 2017-2019 West Baseball Bases on Balls in One Season Chuck Viggato 22 1963 West Baseball Batting Average in One Season Scott Schreiner 0.629 1990 West Baseball Batting Average for Two Seasons Codey Allen (2010 - .455; 2011 - .483) 0.462 2010 & 2011 West Baseball Batting Average in Career (2 year) Codey Allen (2010 - .455; 2011 - .483) 0.462 2010-2011 West Baseball Batting Average in Career (3 year) Chuck Viggato 0.439 1961, 1962, 1963 West Baseball Hits in One Season Scott Schreiner 39 1990 West Baseball Hits in Career Scott Schreiner 77 1988-1990 West Baseball Doubles in One Season Mike Kapsiak 9 1990 West Baseball Doubles in Career Chase Chodkowski 17 2017-2019 West Baseball Triples in One Season John Theil 5 1975 West Baseball Triples in Career John Theil / Dale Howard 5 1975-1976 / 1977-1978 West Baseball Home Runs in One Season Bob Bifulco 7 1963 West Baseball Home Runs in Career Dave Rosenhahn 7 1977-1978 West Baseball RBI's in One Season Fred Stornelli 27 1971 West Baseball RBI's in Career Fred Stornelli 41 1970-1971 West Baseball Runs Scored One Season Tom Rosenhahn 24 1971 West Baseball Runs Scored in Career Dave Lang 29 1958-1960 West Baseball Stolen Bases in One Season Chase Chodkowski 17 2017 West Baseball Stolen Bases in Career Chase Chodkowski 43 2017-2019 West Baseball Pitching: Consecutive Innings Pitched Bruce Lewis 14 1970 (vs. Orch Park) West Baseball Pitching: Consecutive Pefect Innings Dave Pearce 6 1/3 1952 (vs Pine Hill) West Baseball Pitching: Consecutive Shutout Innings Dave Rosenhahn 17 1978 Dave Pearce / Bill Glinski / Bill Widmer / Dennis Howard / Dave 1951 / 1953 / 1969 / 1977 / West Baseball Pitching: No-Hitters Rosenhahn 1 1978 West Baseball Pitching: Strikeouts in One Game Jim Niewczyk 19 1972 (vs. Orch Park) West Baseball Pitching: Strikeouts in One Season Jim Niewczyk 139 1972 West Baseball Pitching: Strikeouts in a Career Jim Niewczyk 235 1970-1972 West Baseball Pitching: Consecutive Strikeouts Gary Gaiser 12 1969 (vs. Lancaster) West Baseball Pitching: Shutouts in One Season Dave Rosenhahn 5 1978 West Baseball Pitching: Shutouts in a Career Dave Rosenhahn 5 1977-1978 West Baseball Pitching: Wins Consecutive Dave Rosenhahn 10 1977-1978 West Baseball Pitching: Wins in One Season Dennis Howard 9 1977 West Baseball Pitching: Wins in a Career Dennis Howard 19 1975-1977.
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