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Volume 70, Issue Suppl 3
S75 A Clinical Model to Estimate the Probability of Pulmonary Nodule Malignancy in a Population of Oncology Follow-up Patients
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Improving lung cancer outcomes
S75 A Clinical Model to Estimate the Probability of Pulmonary Nodule Malignancy in a Population of Oncology Follow-up Patients
Online download statistics by month:
Online download statistics by month: November 2015 to August 2024
Abstract
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Jan 2016
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May 2016
7
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Jun 2016
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Jul 2016
6
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Oct 2016
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9
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Jun 2017
5
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10
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Aug 2017
6
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Sep 2017
4
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Oct 2017
2
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Nov 2017
10
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Dec 2017
12
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1
Jan 2018
14
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Feb 2018
16
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Mar 2018
24
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Apr 2018
12
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May 2018
14
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Jun 2018
8
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Jul 2018
14
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Aug 2018
8
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Sep 2018
4
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Oct 2018
4
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Nov 2018
2
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Dec 2018
10
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Mar 2019
6
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2
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0
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2
May 2019
6
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1
Jun 2019
2
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Aug 2019
6
0
1
Sep 2019
3
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2
Oct 2019
2
0
1
Nov 2019
6
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5
Dec 2019
8
0
3
Jan 2020
8
0
1
Feb 2020
2
0
1
Mar 2020
4
0
2
Apr 2020
2
0
1
May 2020
0
0
1
Jun 2020
2
0
1
Jul 2020
18
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2
Aug 2020
0
0
1
Sep 2020
10
0
1
Oct 2020
8
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2
Nov 2020
2
0
3
Dec 2020
2
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2
Jan 2021
4
0
3
Feb 2021
0
0
2
Apr 2021
10
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1
May 2021
1
0
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Jun 2021
0
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2
Jul 2021
0
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2
Aug 2021
0
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Sep 2021
0
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Oct 2021
4
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18
Nov 2021
10
0
10
Dec 2021
6
0
1
Jan 2022
9
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1
Feb 2022
4
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Mar 2022
2
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2
Apr 2022
7
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May 2022
10
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6
Jun 2022
30
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2
Jul 2022
10
0
2
Aug 2022
15
0
3
Sep 2022
10
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6
Oct 2022
4
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2
Nov 2022
8
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5
Dec 2022
12
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Jan 2023
4
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3
Feb 2023
4
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Mar 2023
14
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1
Apr 2023
22
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May 2023
11
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Jun 2023
28
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Jul 2023
22
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Aug 2023
29
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27
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Oct 2023
30
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17
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Dec 2023
40
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Jan 2024
44
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Feb 2024
20
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Mar 2024
38
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5
Apr 2024
52
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2
May 2024
41
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Jun 2024
32
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Jul 2024
30
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Aug 2024
10
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Total
1082
0
151
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