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Volume 22, Issue Suppl 2
347 Using machine learning to categorise Emergency Department data for product safety surveillance
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Consumer Safety
Parallel Tue 3.5
347 Using machine learning to categorise Emergency Department data for product safety surveillance
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14
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22
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Nov 2018
38
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Dec 2018
38
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3
Jan 2019
25
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Feb 2019
36
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Mar 2019
20
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Apr 2019
8
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May 2019
4
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Jun 2019
24
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Jul 2019
14
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8
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Sep 2019
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Oct 2019
7
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Nov 2019
34
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Dec 2019
4
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1
Jan 2020
6
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2
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18
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10
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Oct 2020
9
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17
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3
Dec 2020
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6
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6
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4
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1
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13
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Jan 2022
12
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Feb 2022
4
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Mar 2022
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Apr 2022
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May 2022
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16
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7
Oct 2022
5
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4
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8
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5
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11
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4
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12
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16
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May 2024
4
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6
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Oct 2024
14
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Nov 2024
2
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3
Total
1280
0
164
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