ESTADÍSTICAS DE OFENSIVA As of 10 AUG 2019 OFFENSIVE STATISTICS

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ESTADÍSTICAS DE OFENSIVA As of 10 AUG 2019 OFFENSIVE STATISTICS CAMPO DE SOFTBOL SOFTBOL SOFTBALL FIELD SOFTBALL MUJERES WOMEN ESTADÍSTICAS DE OFENSIVA As of 10 AUG 2019 OFFENSIVE STATISTICS INCLUDING 19 COMPLETED GAMES BATTING AVERAGE LEADERS SLUGGING PERCENTAGE LEADERS (Minimum 2.1 plate appearances per game played by team) Rk Player Team GP PA AB H BA Rk Player Team GP PA AB TB Slg% 1 MCCLENEY Haylie USA 7 26 23 14 .609 1 MCCLENEY Haylie USA 7 26 23 24 1.043 2 PALACIOS Sashel MEX 6 20 17 8 .471 2 GILBERT Jennifer CAN 5 17 14 13 .929 3 VIDALES Victoria MEX 6 21 17 8 .471 3 PALACIOS Sashel MEX 6 20 17 14 .824 4 FRANKLIN Larissa CAN 7 21 18 8 .444 4 SPAULDING Delaney USA 8 22 22 18 .818 5 GILBERT Jennifer CAN 5 17 14 6 .429 5 VIDALES Victoria MEX 6 21 17 13 .765 6 SALLING Jennifer CAN 7 22 19 7 .368 6 CLAUDIO Karla PUR 7 22 18 12 .667 7 SPAULDING Delaney USA 8 22 22 8 .364 7 COZZA Jena PUR 7 21 20 13 .650 8 HAYWARD Victoria CAN 6 20 17 6 .353 8 AGUILAR Alison USA 8 27 22 14 .636 9 COZZA Jena PUR 7 21 20 7 .350 9 SPEERS Holly CAN 7 24 24 15 .625 10 CLAUDIO Karla PUR 7 22 18 6 .333 10 FRANKLIN Larissa CAN 7 21 18 10 .556 HOME RUN LEADERS RUNS BATTED IN LEADERS Rk Player Team HR Rk Player Team RBI 1 SPAULDING Delaney USA 3 1 SPAULDING Delaney USA 11 2 MCCLENEY Haylie USA 3 2 AGUILAR Alison USA 8 3 GILBERT Jennifer CAN 2 3 PALACIOS Sashel MEX 6 4 PALACIOS Sashel MEX 2 4 CLAUDIO Karla PUR 6 5 CLAUDIO Karla PUR 2 5 GILBERT Jennifer CAN 5 6 COZZA Jena PUR 2 6 VIDALES Victoria MEX 5 7 AGUILAR Alison USA 2 7 ENTZMINGER Emma CAN 5 8 SPEERS Holly CAN 2 8 SPEERS Holly CAN 5 9 MERRITT Kirsti USA 1 9 FRANKLIN Larissa CAN 4 10 MCCLENEY Haylie USA 4 There are 2 players tied with 1 RUNS SCORED LEADERS STOLEN BASE LEADERS Rk Player Team R Rk Player Team SB 1 MCCLENEY Haylie USA 9 1 MERRITT Kirsti USA 3 2 MERRITT Kirsti USA 6 2 HAYWARD Victoria CAN 2 3 GILBERT Jennifer CAN 5 2 REED Janette USA 2 4 AGUILAR Alison USA 5 2 RODRIGUEZ Natalia PUR 2 4 SPAULDING Delaney USA 5 2 URTEZ Anissa MEX 2 6 POLIDORI Erika CAN 4 2 WEBB Giovannah PER 2 7 ARIOTO Valerie USA 4 There are 12 players tied with 1 8 LYE Joanne C M CAN 4 9 URTEZ Anissa MEX 4 There are 3 players tied with 4 Note: Determination of rankings: Batting average: Batting average (descending), Slugging percentage (descending), At bats (descending) Slugging percentage: Slugging percentage (descending), At bats (descending) Home runs: Home runs (descending), At bats (ascending) Runs batted in: Runs batted in (descending), At bats (ascending) Runs scored: Runs scored (descending), At bats (ascending) Stolen bases: Stolen bases (descending), Stolen base percentage(descending) Legend: AB At bats BA Batting average GP Games played H Hits HR Home runs PA Plate appearances R Runs Rk Rank RBI Runs batted in SB Stolen bases Slg% Slugging percentage TB Total bases on hits SOBWSBLTEAM9----------------------_C85A 6.0 SAT 10 AUG 2019 16:11 Page 1/1 .
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