On-Court Activity and Game-Related Statistics during Scoring Streaks in Basketball: Applied Use of Accelerometers
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Design and Setting
2.2. Participants
2.3. Procedures
2.4. Data Analyses
2.5. Statistical Analyses
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Team | Players | Age (years) | Stature (cm) | Mass (kg) | Matches Monitored | Scoring Streaks | Proportion of Match Time Spent in Scoring Streaks (%) | Streaks Against | Proportion of Match Time Spent in Streaks Against (%) |
---|---|---|---|---|---|---|---|---|---|
P Women | 12 | 25.2 ± 5.9 | 181 ± 11 | 79.3 ± 17.1 | 20 | 15 | 2.2 | 31 | 4.5 |
SP Women | 12 | 28.1 ± 5.0 | 176 ± 10 | 75.9 ± 18.2 | 20 | 31 | 4.8 | 15 | 2.3 |
SP Men | 13 | 26.8 ± 5.2 | 192 ± 8 | 96.2 ± 16.4 | 22 | 41 | 6.0 | 26 | 3.7 |
Professional Women | Semi-Professional Women | Semi-Professional Men | All Teams Together | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Scoring Streaks | Regular Play | Streaks Against | Scoring Streaks | Regular Play | Streaks Against | Scoring Streaks | Regular Play | Streaks Against | Scoring Streaks | Regular Play | Streaks Against | |
AvFNET | 579 (550–618) | 592 (547–635) | 600 (550–654) | 554 (522–627) | 543 (512–580) | 549 (515–595) | 808 (713–848) | 784 (718–845) | 782 (727–843) | 618 (554–750) | 608 (547–760) | 627 (550–779) |
Inactive (%) | 5.9 (3.9–12.2) | 6.6 (4.8–8.6) | 6.0 (4.4–9.9) | 6.8 (0.7–18.1) | 5.5 (4.1–8.4) | 8.5 (4.2–15.3) | 6.6 (3.1–9.9) | 6.3 (4.9–9.5) | 5.7 (3.4–8.5) | 6.6 (3.2–11.2) | 6.3 (4.8–8.5) | 6.3 (4.4–10.3) |
Light (%) | 23.4 (18.0–28.9) | 22.2 (19.2–24.6) | 20.8 (19.1–22.5) | 21.5 (14.3–40.8) | 19.4 (16.7–27.6) | 20.3 (13.9–22.3) | 22.3 (19.1–28.4) | 23.5 (18.5–26.7) | 26.3 (18.5–29.0) | 22.3 (17.8–29.1) | 22.6 (18.2–25.7) | 20.8 (18.6–25.8) |
Moderate-Vigorous (%) | 41.8 (36.0–45.7) | 40.2 (35.9–49.1) | 42.1 (35.5–48.7) | 39.9 (31.0–46.6) | 43.4 (39.1–46.8) | 40.6 (30.1–46.2) | 46.3 (38.3–49.4) | 46.5 (39.3–50.5) | 45.2 (37.4–51.1) | 42.1 (36.6–48.2) | 44.5 (38.9–49.1) | 43.4 ^ (35.4–48.7) |
Maximal (%) | 12.4 (10.2–14.5) | 10.7 (9.8–12.0) | 10.6 * (10.2–11.9) | 9.2 (6.7–12.1) | 12.6 (9.4–15.9) | 9.1 (8.5–12.7) | 8.7 (7.6–12.5) | 9.8 (7.8–12.5) | 8.9 (7.4–10.6) | 10.3 (8.2–13.0) | 10.3 (9.2–12.6) | 10.2 (8.2–11.6) |
Supramaximal (%) | 14.7 (8.8–21.2) | 15.1 (9.7–25.0) | 15.2 (11.8–29.4) | 14.6 (12.7–28.6) | 18.9 (11.3–20.4) | 20.4 (10.8–27.9) | 14.2 (9.9–16.5) | 15.0 (11.9–16.1) | 14.1 (11.0–20.2) | 14.6 (11.4–18.3) | 15.3 (11.1–19.9) | 14.7 (11.6–24.6) |
Professional Women | Semi-Professional Women | Semi-Professional Men | All Teams Together | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Scoring Streaks | Regular Play | Streaks Against | Scoring Streaks | Regular Play | Streaks Against | Scoring Streaks | Regular Play | Streaks Against | Scoring Streaks | Regular Play | Streaks Against | |
Fouls∙min−1 | 0.0 (0.0–0.9) | 0.4 (0.3–0.4) | 0.6 (0.0–1.8) | 0.0 (0.0–0.1) | 0.3 (0.2–0.4) | 0.5 (0.4–1.5) | 0.0 (0.0–0.3) | 0.4 (0.4–0.5) | 1.2 (0.6–3.6) | 0.0 ^ (0.0–0.3) | 0.4 * (0.3–0.5) | 0.8 *,^ (0.2–1.9) |
Proportion of shot attempts that were 2P attempts (%) | 67 (50–93) | 67 (63–71) | 71 (33–100) | 80 (65–95) | 70 (65–78) | 25 (0–50) | 70 (60–75) | 60 (55–64) | 61 (33–67) | 75 (62–89) | 65 (59–71) | 60 *,^ (0–75) |
Proportion of shot attempts that were 3P attempts (%) | 33 (7–50) | 33 (29–37) | 29 (0–67) | 20 (5–35) | 30 (22–35) | 75 (50–100) | 30 (25–40) | 40 (36–45) | 39 (33–67) | 25 ^ (11–38) | 35 * (29–41) | 40 (25–100) |
Offensive rebounds∙min−1 | 0.0 (0.0–0.2) | 0.3 (0.2–0.4) | 0.0 (0.0–0.1) | 0.0 (0.0–0.5) | 0.4 (0.3–0.4) | 0.4 (0.0–0.5) | 0.4 (0.0–0.6) | 0.3 (0.2–0.4) | 0.0 (0.0–0.0) | 0.0 (0.0–0.5) | 0.3 (0.3–0.4) | 0.0^ (0.0–0.4) |
Defensive rebounds∙min−1 | 1.3 (1.0–1.8) | 0.7 (0.7–0.8) | 0.0 (0.0–0.3) | 1.2 (0.9–1.5) | 0.8 (0.7–0.8) | 0.0 (0.0–0.4) | 1.4 (1.1–1.5) | 0.7 (0.6–0.9) | 0.0 (0.0–0.1) | 1.3 ^ (1.0–1.6) | 0.8 * (0.7–0.8) | 0.0 *,^ (0.0–0.2) |
Shot attempts∙min−1 | 3.1 (2.7–3.6) | 1.8 (1.7–2.0) | 1.4 (1.1–1.9) | 3.1 (2.7–3.9) | 2.0 (1.7–2.1) | 1.7 (1.0–2.1) | 3.4 (2.9–4.0) | 1.9 (1.8–2.0) | 1.5 (0.5–1.9) | 3.2 ^ (2.8–3.9) | 1.9 * (1.7–2.0) | 1.6 *,^ (1.1–1.9) |
Combined shooting percentage (field goals and free throws combined) | 100 (94–100) | 44 (42–49) | 0 # | 87 (78–100) | 46 (42–51) | 0 # | 86 (75–92) | 46 (44–50) | 0 # | 88 ^ (79–100) | 45 * (42–50) | 0 # |
Proportion of scoring shots involving an assist (%) | 50 (42–67) | 60 (52–69) | - | 80 (67–95) | 78 (67–83) | - | 50 (33–63) | 54 (40–67) | - | 60 (50–80) | 60 (50–70) | - |
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Palmer, J.A.; Bini, R.; Wundersitz, D.; Kingsley, M. On-Court Activity and Game-Related Statistics during Scoring Streaks in Basketball: Applied Use of Accelerometers. Sensors 2022, 22, 4059. https://doi.org/10.3390/s22114059
Palmer JA, Bini R, Wundersitz D, Kingsley M. On-Court Activity and Game-Related Statistics during Scoring Streaks in Basketball: Applied Use of Accelerometers. Sensors. 2022; 22(11):4059. https://doi.org/10.3390/s22114059
Chicago/Turabian StylePalmer, Jodie A., Rodrigo Bini, Daniel Wundersitz, and Michael Kingsley. 2022. "On-Court Activity and Game-Related Statistics during Scoring Streaks in Basketball: Applied Use of Accelerometers" Sensors 22, no. 11: 4059. https://doi.org/10.3390/s22114059