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BMC Urol. 2004; 4: 8.
doi: 10.1186/1471-2490-4-8. Published online 2004 June 19.
Copyright © 2004
Liao and Datta; licensee BioMed Central Ltd. This is an Open
Access article: verbatim copying and redistribution of this article
are permitted in all media for any purpose, provided this notice
is preserved along with the article's original URL.
A simple computer program for calculating PSA
recurrence in prostate cancer patients
Reviewed by Zhongyue Liao1,2 and
Milton W Datta2
1Bioinformatics Program
Medical College of Wisconsin, Milwaukee, WI, 53226, U.S.A
2Department of Pathology
Medical College of Wisconsin, Milwaukee, WI, 53226, U.S.A
Received March 3, 2004; Accepted June 19, 2004.
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Background
Prostate cancer
is the most common tumor in men. The most commonly used diagnostic
and tumor recurrence marker is Prostate Specific Antigen (PSA).
After surgical removal or radiation treatment, PSA levels drop
(PSA nadir) and subsequent elevated or increased PSA levels are
indicative of recurrent disease (PSA recurrence). For clinical
follow-up and local care PSA nadir and recurrence is often hand
calculated for patients, which can result in the application
of heterogeneous criteria. For large datasets of prostate cancer
patients used in clinical studies PSA measurements are used as
surrogate measures of disease progression. In these datasets
a method to measure PSA recurrence is needed for the subsequent
analysis of outcomes data and as such need to be applied in a
uniform and reproducible manner. This method needs to be simple
and reproducible, and based on known aspects of PSA biology.
Methods
We have created
a simple Perl-based algorithm for the calculation of post-treatment
PSA outcomes results based on the initial PSA and multiple PSA
values obtained after treatment. The algorithm tracks the post-surgical
PSA nadir and if present, subsequent PSA recurrence. Times to
PSA recurrence or recurrence free intervals are supplied in months.
Results
Use of the algorithm
is demonstrated with a sample dataset from prostate cancer patients.
The results are compared with hand-annotated PSA recurrence analysis.
The strengths and limitations are discussed.
Conclusions
The use of this
simple PSA algorithm allows for the standardized analysis of
PSA recurrence in large datasets of patients who have undergone
treatment for prostate cancer. The script is freely available,
and easily modifiable for desired user parameters and improvements.
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Prostate cancer
is the most common tumor in men and accounts for 41% of male
new cancer diagnoses and 14% of cancer deaths. This tumor is
predominantly found in older males and thus most studies of prostate
cancer progression have been confounded by age-related death
not attributable to prostate cancer. For this reason tumor markers
for prostate cancer are of utmost importance in estimating death
from disease. Prostate cancers arise from the epithelial component
of the prostate, a cell that secretes a protein called Prostate
Specific Antigen (PSA)[1].
This protein is present within prostatic epithelial cells and
is secreted in seminal fluid. In addition, prostatic carcinomas
release PSA, which is taken up into the blood stream. Thus PSA
can be measured in the blood of patients and has been used as
an effective screening marker for the development of prostate
carcinoma in men[2].
Levels of PSA in the blood drop to less than measurable levels
(PSA nadir) after surgical removal of the prostate (radical prostatectomy)
or treatment of prostate cancer by radiation [3-5].
This reduction of the PSA blood levels can be tracked over time
in men, and the finding of increasing levels of serum PSA is
considered evidence of a clinical recurrence of prostate cancer
(PSA recurrence), thus triggering additional treatment[3].
These values often predate the clinical evidence of prostate
cancer recurrence as determined by radiographic or physical examination,
and often are the only initial evidence of prostate tumor progression[6].
Thus trends or changes in prostate specific antigen expression
over time can be used as a surrogate marker for prostate cancer
related morbidity in clinical studies. This is of particular
value due to the protracted course of prostate cancer and the
current development of chemotherapeutic, radiotheraputic, cryotheraputic,
or nutritional interventions designed to delay the course of
disease. For these reasons it is very important to be able to
accurately predict and identify trends in the serum PSA levels.
Yet in most clinical studies and local treatment decisions PSA
nadir and recurrence are hand calculated. This often results
in a heterogeneous application of PSA nadir and recurrence guidelines,
providing a confounding variable for subsequent use of the data
in clinical studies. Thus there is a need for processes that
allow for the uniform application of PSA nadir and recurrence
criteria that can subsequently be used in clinical studies. Here
we present a simple Perl script that can be used with patient
data for the determination of PSA nadir and recurrence in men
who have been treated for prostate cancer. This algorithm orders
the serum PSA values within a data set by date, determines the
rate of decrease and the post-treatment disappearance of serum
PSA (PSA nadir) based on the PSA half-life, and subsequently
identifies increases in serum PSA (PSA recurrence). Timelines
are calculated from the PSA nadir in months recurrence free or
months to PSA recurrence. The clinical standards and practice
guidelines used to determine the rules of the algorithm are described,
but can be freely and easily modified by the user. The algorithm
is demonstrated using a sample prostate cancer dataset.
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The PSA script
takes a series of dated PSA values and calculates the PSA drop
based on the half-life of PSA in serum to determine PSA nadir.
The time to PSA nadir is determined based on the "initial PSA",
defined as a PSA value prior to patient treatment, and an estimated
PSA half-life of 2–3 days. If PSA nadir is achieved the script
subsequently calculates the PSA recurrence, if present, based
on sequential rising PSA values and threshold cutoffs. Requirements
for evaluation by the PSA script include the initial dated PSA
value prior to treatment, the date of initial treatment, and
PSA values after radical prostatectomy with their associated
dates of testing. With post-treatment PSA values the script will
attempt to determine a PSA nadir (see below) or post the samples
as "recurrence status unclear." The PSA script uses the initial
PSA value before treatment to calculate the allowed time to PSA
nadir (1 month for PSA values less than 50, 3 months for PSA
values greater than 50, based on a serum PSA half-life of 2–3
days). If there is an invalid date, defined by a year before
1900, or a month not 1–12, or the follow-up dates are after the
current date, then the script will output "Invalid follow-up
date found" for that case. If for a particular case there is
no (or an invalid) date of treatment, or if there is no initial
PSA value then the script will output "unknown". The lack of
PSA values within the initial 3 months after treatment will result
in the script outputting "nadir unclear" and then using any additional
PSA values to attempt a calculation of the PSA recurrence status.
The PSA script orders the post-treatment PSA samples by date
and takes the PSA values within 1 or 3 months of the treatment
date and examines their decrease to zero (PSA nadir). These PSA
values must decrease to less than 0.4, but again the user through
simple script edits may modify this. Increasing post-treatment
PSA values before the PSA nadir value is achieved results in
the PSA script output "post prostatectomy elevated PSA." If during
the 1 or 3 month post-treatment window the PSA values do not
drop below 0.4, then the script outputs "nadir unclear".
Once this nadir
value is achieved the date is then stored as the "PSA nadir" where
no residual prostate cancer is present. After achieving PSA nadir
subroutines are used to identify subsequent PSA increases over
time as an indication of PSA recurrence. There are many methods
for defining "PSA recurrence", with some authors using any single
value above 0.2[7].
Other authors, in particular the American Society for Theraputic
Radiology and Oncology (ASTRO), have defined three consecutive
increases in serum PSA post-surgery[8].
We have chosen to integrate both systems, with PSA recurrence
in the algorithm defined as a single PSA value of greater than
0.4, or a PSA value greater than 0.2 with additional subsequent
increasing values. While this has been successful in our hands,
the algorithm is designed such that a few simple coding changes
can allow a person to alter the algorithm to suit their individual
needs. As the PSA levels rise the date of PSA recurrence is determined
as the date of the initial PSA rise (either the date of the single
value of greater than 0.4 or the date of the PSA value greater
than 0.2, before the subsequent rising PSA values) and this date
is subtracted from the date of initial PSA nadir to determine
the months to PSA recurrence. If there was no documented PSA
nadir date then the script uses the initial treatment date as
the nadir date. These time values are subsequently recorded for
output. Minimum default values used for the algorithm include
a single post-nadir PSA value, otherwise the output of "nadir
achieved, recurrence status unknown." is provided. Thus this
script can be used as a simple method for calculating PSA recurrence
values on any database that tracks serum PSA levels in patients
having been treated for prostate cancer.
The script is
designed to read data from a flat file in csv format, and can
be used by invoking the following file PSARecurReadFile.pl InputDataFileName
OutputDataFileName [MaxNumberOfFollowups], where the maximum
number of follow-up PSA values per case can be set by the user.
If the maximum number of follow-up PSA values is not stated the
script will default to a number by calculating the number from
the number of values in the input file's title line. For example,
if the title line is "init_value, pstm month, pstm year, value
A, month A, year A, value B, month B, year B" 2 (value A and
value B) will be set as the default maximum number of follow-ups
by the script). An output file is provided as additional columns
(table 1)
with each row representing an individual case. If these columns
already exist in the output file, they can be overwritten with
new data. This is useful when the script is re-run on a set of
existing cases after additional PSA data has been collected.
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Sample outputs
analyzed with the PSA recurrence algorithm demonstrate the calculation
of PSA recurrence rates for 30 patients with prostate cancer
treated by radical prostatectomy. An anonymous de-identified
sample dataset of 30 patients with a range of 0 to 21 post-treatment
PSA values per patient were analyzed with the PSA algorithm.
Using this dataset (see supplemental file 2) the PSA script correctly
calculated 14 cases that underwent PSA nadir. Of these cases
8 were without evidence of PSA recurrence, while 5 underwent
PSA recurrence. In 1 case there was insufficient data to calculate
PSA recurrence status after achieving PSA nadir. In 10 cases
there was insufficient data to calculate PSA nadir due to a lack
of PSA values within the 1 or 3 month interval after treatment,
but data was available to calculate PSA recurrence status. The
PSA script was not able to calculate the PSA status of 6 cases
in the dataset due to missing initial PSA data (3 cases), dates
(1 case) of data of any kind (2 cases). The results obtained
from the PSA script was in exact agreement with a hand annotated
results calculated by one of the authors (M.W.D.). In the cases
where the PSA script was not able to provide a definitive result,
the author was able to do no better.
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The use of the
PSA script was able to accurately identify patients who had undergone
PSA nadir, and patients with subsequent PSA recurrence. In each
of these cases the use of a uniform standard was of great value
in the subsequent analysis of the outcomes data. A specific area
worthy of comment includes the identification of cases with "post-treatment
elevated PSA". In these cases there has been a failure to achieve
PSA nadir, as defined by decreasing PSA values to less than 0.4
post-prostatectomy. Reasons why a patient may not undergo PSA
nadir include the presence of residual prostate cancer within
the patient. This may be due to incomplete surgical excision
of tumor, spread of the tumor outside the prostate prior to surgery
or radiation treatment. In addition, if residual normal prostate
tissue is left within the patient after surgery, this may account
for residual small but elevated PSA levels. Further evaluation
of patients who fail to undergo PSA nadir may identify the potential
roles of these factors in the elevated PSA values. After PSA
nadir, the elevation of PSA values is indicative of tumor recurrence.
The rate at which the PSA rises, or PSA velocity, has been noted
to be different between local tumor recurrence and the growth
of metastatic disease[9].
This is important as the types of treatment offered to the patients
(local radiation or cryotherapy vs. hormonal/chemotherapy) differ.
Further modifications of this simple script should focus on improving
these measurements if further clinical value is desired.
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Here we have
presented a simple Perl script for the evaluation of PSA status
in patient datasets. Based on the current criteria for PSA nadir
and recurrence, the script provides for the uniform application
of PSA nadir and recurrence criteria. At the same time the script
is flexible enough to allow users to change the criteria (PSA
cutoff values, etc) for specific use interests and studies. It
is hoped that this will facilitate the use of large patient samples
for prostate cancer studies. The Perl script provided without
any restrictions and may be modified for any purpose. It is readily
available and is attached to this publication (appendix). While
the script has been used with an associated Oracle 8 database,
the script has been modified to be used with an input flat file,
and as such does not need any database.
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The authors (Z.L.
and M.W.D.) have contributed equally this work.
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Additional File 1
Additional
files are provided and include the Perl PSA Recurrence algorithm
along with example files of input data and expected output
data for the optimization of the algorithm by individual users.
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The authors would
like to acknowledge the support of the NCI Co-Operative Prostate
Cancer Tissue Resource (CPCTR) which led to the initiation of
this study. Z.L. and M.W.D. are funded in part by NCI U01-CA86743,
and Z.L. is funded in part by the MCW General Clinical Research
Center Grant NIH M01-RR00058.
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- Oesterling JE, Chan DW, Epstein JI, Kimball
A. W., Jr. Bruzek DJ, Rock RC, Brendler CB, Walsh PC. Prostate
specific antigen in the preoperative and postoperative evaluation
of localized prostatic cancer treated with radical prostatectomy. J
Urol 1988;139:766–772. [PubMed]
- Chu TM, Murphy GP. What's new in tumor markers
for prostate cancer? Urology 1986;27:487–491. [PubMed]
- Partin AW, Pound CR, Clemens JQ, Epstein
JI, Walsh PC. Serum PSA after anatomic radical prostatectomy.
The Johns Hopkins experience after 10 years. Urol
Clin North Am 1993;20:713–725. [PubMed]
- Chodak GW, Neumann J, Blix G, Sutton H,
Farah R. Effect of external beam radiation therapy on serum
prostate-specific antigen. Urology 1990;35:288–294. [PubMed]
- Cadeddu JA, Pearson JD, Partin AW, Epstein
JI, Carter HB. Relationship between changes in prostate-specific
antigen and prognosis of prostate cancer. Urology 1993;42:383–389. [PubMed]
- Moul JW. Prostate specific antigen only
progression of prostate cancer. J Urol 2000;163:1632–1642. [PubMed] [Full Text]
- Polascik TJ, Oesterling JE, Partin AW. Prostate
specific antigen: a decade of discovery--what we have learned
and where we are going. J Urol 1999;162:293–306. [PubMed] [Full Text]
- Shipley WU, Thames HD, Sandler HM, Hanks
GE, Zietman AL, Perez CA, Kuban DA, Hancock SL, Smith CD.
Radiation therapy for clinically localized prostate cancer:
a multi-institutional pooled analysis. Jama 1999;281:1598–1604. [PubMed] [Full Text]
- Partin AW, Pearson JD, Landis PK, Carter
HB, Pound CR, Clemens JQ, Epstein JI, Walsh PC. Evaluation
of serum prostate-specific antigen velocity after radical
prostatectomy to distinguish local recurrence from distant
metastases. Urology 1994;43:649–659. [PubMed]
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Table
1
Added output
columns for each case
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