PURPOSE: To determine whether maternal plasma cell-free DNA sequencing can effectively identify trisomy 18 and 13. METHODS: Sixty-two pregnancies with trisomy 18 and 12 with trisomy 13 were selected from a cohort of 4,664 pregnancies along with matched euploid controls (including 212 additional Down syndrome and matched controls already reported), and their samples tested using a laboratory-developed, next-generation sequencing test. Interpretation of the results for chromosome 18 and 13 included adjustment for CG content bias. RESULTS: Among the 99.1% of samples interpreted (1,971/1,988), observed trisomy 18 and 13 detection rates were 100% (59/59) and 91.7% (11/12) at false-positive rates of 0.28% and 0.97%, respectively. Among the 17 samples without an interpretation, three were trisomy 18. If z-score cutoffs for trisomy 18 and 13 were raised slightly, the overall false-positive rates for the three aneuploidies could be as low as 0.1% (2/1,688) at an overall detection rate of 98.9% (280/283) for common aneuploidies. An independent academic laboratory confirmed performance in a subset. CONCLUSION: Among high-risk pregnancies, sequencing circulating cell-free DNA detects nearly all cases of Down syndrome, trisomy 18, and trisomy 13, at a low false-positive rate. This can potentially reduce invasive diagnostic procedures and related fetal losses by 95%. Evidence supports clinical testing for these aneuploidies.
PURPOSE: To determine whether maternal plasma cell-free DNA sequencing can effectively identify trisomy 18 and 13. METHODS: Sixty-two pregnancies with trisomy 18 and 12 with trisomy 13 were selected from a cohort of 4,664 pregnancies along with matched euploid controls (including 212 additional Down syndrome and matched controls already reported), and their samples tested using a laboratory-developed, next-generation sequencing test. Interpretation of the results for chromosome 18 and 13 included adjustment for CG content bias. RESULTS: Among the 99.1% of samples interpreted (1,971/1,988), observed trisomy 18 and 13 detection rates were 100% (59/59) and 91.7% (11/12) at false-positive rates of 0.28% and 0.97%, respectively. Among the 17 samples without an interpretation, three were trisomy 18. If z-score cutoffs for trisomy 18 and 13 were raised slightly, the overall false-positive rates for the three aneuploidies could be as low as 0.1% (2/1,688) at an overall detection rate of 98.9% (280/283) for common aneuploidies. An independent academic laboratory confirmed performance in a subset. CONCLUSION: Among high-risk pregnancies, sequencing circulating cell-free DNA detects nearly all cases of Down syndrome, trisomy 18, and trisomy 13, at a low false-positive rate. This can potentially reduce invasive diagnostic procedures and related fetal losses by 95%. Evidence supports clinical testing for these aneuploidies.
The main focus of prenatal screening programs is to identify fetuses with Down syndrome
or open neural tube defects. Identification of two less common autosomal
aneuploidies—trisomy 18 (Edwards syndrome) and trisomy 13 (Patau syndrome)—is,
however, an important secondary aim. In the absence of prenatal diagnosis and selective
termination, an estimated 7,730 cases with Down syndrome, 1,330 with trisomy 18, and 600
with trisomy 13 are expected at term among the 4.25 million pregnancies in the United
States each year.[1,2] Trisomy 18 and 13, as well as Down syndrome (trisomy 21), are more
common in the first and second trimesters than at term, owing to high rates of spontaneous
loss.[3] Neither trisomy 18 nor trisomy 13 is
associated with long-term survival, with 5–10% of live-born infants surviving >1
year.[4,5] Most
ultrasound/biochemical screening programs for Down syndrome currently provide targeted
interpretations for trisomy 18 and/or trisomy 13 that allow for a majority of these cases
to be detected (60% or higher), at low false-positive rates (1% or lower).[6,7,8]Next-generation sequencing of circulating cell–free DNA in maternal plasma is
capable of identifying nearly all Down syndrome pregnancies with low false-positive
rates,[9,10,11,12,13] but achieving that level of performance for identifying trisomy 18
and 13 is expected to be more difficult, owing mainly to higher variability of their
percent genomic representation in euploid pregnancies.[12,13,14] As a result, the successful application of such testing for all
three of these autosomal aneuploidies has not yet been described in a clinical setting,
despite a reanalysis of the initial data that demonstrated clear improvement.[15] The present study addresses this issue.
Materials and Methods
Ensuring the study's integrity
Strategies and actions to ensure the study's integrity have been described
earlier.[10] Briefly, an independent
three-person oversight committee was established, an independent laboratory provided
confirmatory testing, standard operating protocols were written and implemented in
Clinical Laboratory Improvement Amendments–approved laboratory settings, and steps
were taken to ensure the isolation of enrollment sites and outcome information from the
study sponsor and testing laboratories.
Sample collection
An international collaboration of 27 prenatal diagnostic centers collected and
processed the maternal plasma samples from 4,664 women before their diagnostic testing
in the late first and early second trimester (ClinicalTrials.gov NCT00877292). From this
cohort, a nested case/control study was designed. The results of testing 212 pregnancies
with Down syndrome and their 1,484 matched controls have been published.[10] During that same 9-week testing period, samples from
pregnancies with trisomy 18 and 13 and their controls were also tested. Inclusion
criteria were the same as for the earlier study of Down syndrome. Only samples from
singleton pregnancies were included; samples with known mosaicism for trisomy 18 or 13
were excluded. Each pregnancy with trisomy 18 and 13 was matched with three controls
based on the gestational age (nearest week, same trimester), enrollment site, race, and
time in freezer (within 1 month). The present analysis also includes results from all
Down syndrome samples and their euploid controls previously reported, with all samples
being tested and interpreted for trisomy 18 and 13, as well as for Down syndrome.
Massively parallel shotgun sequencing
The laboratory-developed, plasma-based DNA test has been described.[9,10] In brief, circulating
cell–free DNA fragments were isolated from maternal plasma and the fetal fraction
determined using a published method relying on differentially methylated
markers.[9,16]
The remaining isolate was used to generate sequencing libraries. These were normalized
and multiplexed (four samples per lane), allowing 32 samples to be run per flow cell.
The flow cells were sequenced on the Illumina HiSeq 2000 (San Diego, CA), and the
resulting data were analyzed using Illumina software. The laboratory-developed test for
Down syndrome had been verified at the Sequenom Center for Molecular Medicine (SCMM) in
San Diego before testing on this data set.[9] By
contrast, the test for trisomy 18 and 13 was not formally verified at SCMM before being
applied to this data set, because of the limited availability of cases. However, an
algorithm, which included routine GC adjustment of chromosome 18 and 13
counts,[15,16] and the setting of flow-cell specific cutoff levels was developed
and “locked down,” before any laboratory testing. Accounting for the
GC-content bias involved multiplying the raw matched reads by a correction factor
derived from the relationship between GC content of each 50-kb “bin” across
the genome, versus the number of matched reads.[15,16] Computer interpretation relied
on a robust estimate of the standard deviations above or below the central estimate
(z-score)[10] for each chromosome of
interest (21, 18, and 13). z-Scores at or above 3 were considered to be
indicative of Down syndrome, trisomy 18, and trisomy 13, respectively. When evaluating
the sequencing data, potential abnormalities in all three chromosomes were examined
simultaneously. The euploid pregnancies were considered to be controls for each
chromosome. All results were reviewed by the laboratory director, who had discretion on
the final interpretation and the ability to request that a second aliquot be tested.
Statistical analyses
Three chromosome-specific detection rates and their corresponding false-positive rates
were computed. An overall false-positive rate was also computed, as more than one
false-positive result might occur in a single sample. Results were also expressed as
multiples of the plate-specific median (MoM) for control pregnancies. Confidence
intervals were computed using the binomial distribution, using True Epistat (Richardson,
TX). Rates and proportions were compared using the t-test, analysis of
variance, χ2, or Fisher's exact test (SAS, Cary, NC). P values were
two-sided with significance defined at the 0.05 level.
Modeling the potential impact of massively parallel shotgun sequencing
testing
The model offers diagnostic testing (amniocentesis or chorionic villus sampling) only
to those women with the highest risks. It begins with routine prenatal screening tests
commonly used in the United States and assesses the impact of subsequent massively
parallel shotgun sequencing (MPSS) testing in those pregnancies with screen-positive
results. We used the vital statistics report, indicating ~4.25 US million births in 2008
and including the distribution of maternal ages at delivery.[2] As part of the College of American Pathologists 2011 FP-A
Survey,[17] participants were asked what
type of screening test(s) they offered and how many were performed monthly (used with
permission). In the United States, the 119 respondents reported 2.61 million women
tested during 2010 (61%). This is likely to be an underestimate, given that 34
participants did not respond and that some screening laboratories do not participate in
the survey. A reasonable estimate is 2.8 million (two-thirds of the 4.25 million
births).Three Down syndrome screening tests were modeled: (i) combined testing (nuchal
translucency ultrasound measurement and serum measurements of PAPP-A and the free β
subunit of human chorionic gonadotropin at about 11–13 weeks' gestation);
(ii) quadruple testing (serum measurements of α-fetoprotein, unconjugated estriol,
human chorionic gonadotropin, and inhibin-A at about 15–20 weeks'
gestation); and (iii) integrated/sequential testing (information from both the combined
and quadruple test together). The corresponding Down syndrome and trisomy 18 detection
rates and false-positive rates are based on published parameters[18] and the 2008 maternal age distribution. Studies have
documented that the uptake of diagnostic testing is dependent on the reported risk, with
higher uptake associated with higher risks,[19,20,21] and the model uses data from one of these[19] for the diagnostic testing uptake rate after a screening test,
as well as after a positive MPSS test. The model relies on a summary estimate of 99%
detection for Down syndrome and trisomy 18 at an overall 0.5% false-positive rate for
MPSS testing, along with a 0.9% failure rate. The model outcomes include Down syndrome
and trisomy 18 detection rates, numbers of women offered diagnostic testing, diagnostic
procedures avoided, and procedure-related losses avoided. Each screening test is
separately modeled using the US population. Trisomy 13 is not included in the model
because of its lower prevalence, as well as imprecise or biased estimates for detection
and false-positive rates.
Results
Study samples
Among the 4,664 samples collected, 62 samples with trisomy 18 and 12 with trisomy 13
were identified and included in the nested case/control study. Among the trisomy 18
samples, one was initially selected as a euploid control for a Down syndrome pregnancy
based on the results of chorionic villus sampling, but later correctly reported to be
trisomy 18 after testing the products of conception. This one sample has no matched
controls. Thus, 1,988 tests performed in 286 trisomic pregnancies and 1,702 euploid
pregnancies were available for analysis. These include 212 samples with Down syndrome
and 1,483 matched euploid samples from the earlier study, 62 with trisomy 18 along with
183 (61 × 3) matched euploid samples, and 12 with trisomy 13 along with 36 matched
euploid samples. summarizes these numbers,
stratified by the trimester in which the sample was collected. A summary of demographic
and pregnancy-related characteristics of the trisomy 18 and 13 cases, and their matched
euploid pregnancies, is shown in . Overall,
110 samples failed the initial MPSS testing, 105 of which required repeat testing using
a second aliquot. Five were successfully rerun without a second aliquot. A final
interpretation was ultimately provided for 93 of the 110 (84%). Among the 17 that
failed, the most common reason was a fetal fraction under the prespecified lower
acceptable limit of 4%. Among the 17 failures were three trisomy 18 and 14 euploid
pregnancies. One additional partial failure occurred in a sample with borderline quality
parameters. The laboratory director correctly signed out that sample as representing
Down syndrome but would not provide an interpretation for chromosome 18 or 13. The final
failure rate was 0.9% (17/1,988, 95% CI 0.5–1.4%). Testing was successful in the
remaining 1,971 samples, and results were formally reviewed and signed out by the
laboratory director. Overall, usable test results and interpretations were achieved in
1,688 euploid and 283 trisomic pregnancies.
Trisomy 18 test performance
The three trisomy 18 failures were all due to fetal fractions of 3% or lower on both
aliquots. shows the chromosome 18
z-scores versus the fetal fraction for the 59 remaining trisomy 18 samples,
1,688 euploid samples, as well as the Down syndrome and trisomy 13 samples (totaling
1,971). There was complete separation between the two groups. All 59 samples with
trisomy 18 with an interpretation were associated with z-scores of 3.88 or
higher, and were signed out as being consistent with trisomy 18. The detection rate
among the interpreted samples was 100% (59/59, 95% CI 93.9–100%). Among the
euploid samples, five had z-scores of 3.00 or higher, the highest being 3.46.
One z-score from a Down syndrome pregnancy was also elevated (z-score
of 3.14, see Supplementary Table S1 online), but was
correctly interpreted as Down syndrome by the laboratory director. The false-positive
rate for chromosome 18 was 0.3% (5/1,688, 95% CI 0.1–0.7%).
Trisomy 13 test performance
shows the chromosome 13 z-scores
versus the fetal fraction for the same 1,971 samples. The one false-negative was near
the center of the euploid population (z-score of −0.19), and the one
false-positive was unusually high (z-score of 10.94). Except for these two
results, there was complete separation. Among the 12 pregnancies with trisomy 13, 11
were associated with z-scores above 7.17 and were signed out as being
consistent with trisomy 13. The single remaining trisomy 13 sample was signed out as
normal (false-negative). The detection rate was 91.7% (11/12, 95% CI 61–99%).
Sixteen euploid pregnancies had z-scores above 3.0, the highest being 10.94.
One sample from a Down syndrome pregnancy was also elevated (z-score of 5.77,
see Supplementary Table S1 online), but was correctly
interpreted as Down syndrome by the laboratory director. The false-positive rate for
chromosome 13 was 0.9% (16/1,688, 95% CI 0.5–1.5%). All but one false-positive
result fell below a z-score of 6.46. Both the false-negative and false-positive
results were extensively reviewed, and no errors were identified in processing, outcome,
or testing.
Down syndrome test performance
shows a similar plot for chromosome 21
z-score. We have previously shown that adjusting these results for GC content
and utilizing repeat masking improves the performance of the z-score.
Therefore, the results presented in , which
reflect these improvements, will differ from the main results presented in our earlier
article.[10] Two z-scores from Down
syndrome pregnancies are below 3. Based on these revised z-scores, the Down
syndrome detection rate is 99.1% (210/212, 95% CI 96.6–99.9%). Two other elevated
results, one from a euploid pregnancy and one from a trisomy 18 pregnancy, were
correctly interpreted (see Supplementary Table S1 online).
The false-positive rate for chromosome 21 is 0.1% (1/1,688, 95% CI <0.1–0.3%),
using the flow-cell-specific z-scores based on the repeat masked genome and
with GC normalization.
Validation by an independent academic laboratory
The UCLA laboratory received frozen prepared library materials from SCMM for a subset
of 90 samples from trisomy 18, trisomy 13, and euploid pregnancies. They performed
cluster generation, DNA sequencing, and interpretation. The laboratory director signed
out individual results. The chromosome 21 results in the Down syndrome and euploid
samples have already been reported.[10] Of the
90 samples, 81 (90%) were signed out by both sites. Among these results, 59 of 59
euploid, 18 of 18 trisomy 18 and four of four trisomy 13 samples were correctly
classified by each laboratory (see Supplementary Figure S1
online). Among the nine initial sample failures, six were failures at both sites (four
euploid and two trisomy 18 samples), usually due to low fetal fractions. Two euploid
samples that failed at SCMM were successfully sequenced at UCLA and correctly
classified. One additional euploid sample failed at UCLA as a result of laboratory
error, but it was successfully classified by SCMM. A new aliquot was requested by SCMM
for each of the eight initial failures as part of the established clinical protocol
(UCLA could not make such requests); seven of these resulted in successful sequencing
and correct interpretations (two trisomy 18 and five euploid pregnancies). The remaining
repeat aliquot also resulted in a failure, due to the fetal fraction still being under
4%.For an additional 20 pregnancies, 4 ml aliquots were sent to both laboratories
to separately undergo complete testing. No failures occurred: three trisomy 18, two
trisomy 13, and all 15 euploid matched samples were sequenced and correctly classified
by both laboratories (see Supplementary Figure S2
online).
Use of MoM rather than z-score
MPSS results can also be expressed as MoM percent chromosome result for euploid
pregnancies.[10] Separate MoMs must be
generated for chromosomes 21, 18, and 13.
compares the z-score with MoM for correctly classifying the pregnancies and
allows for selecting potentially more appropriate cutoff levels for both interpretive
units. compares all the results of
chromosome 18, with focusing on the data
near the cutoff levels. If a z-score cutoff between 3.4 and 3.8 were used
(vertical gray rectangle), the trisomy 18 detection rate among interpreted results would
be 100%, with no false-positive results. A MoM cutoff level between 1.009 and 1.101
(horizontal gray rectangle) would also result in 100% detection, but with one
false-positive result in a euploid pregnancy and another positive result for a Down
syndrome case discussed earlier.shows the results of chromosome 13
interpretations for the same population. If a z-score cutoff between 6.5 and
7.1 were used, only one false-positive in a euploid pregnancy would occur, along with
one false-negative trisomy 13 case. The same performance is found for a MoM cutoff
between 1.016 and 1.020. shows the
results of chromosome 21 interpretations. There is no cutoff level that would clearly
improve the performance over the z-score of 3 originally validated as part of
the laboratory-developed test. A MoM cutoff between 1.013 and 1.016 would result in only
a single false-negative, with no false-positive results.
Effect of repeat masking on trisomy 18 and 13 interpretations
At the time the samples were originally tested, repeat masking was not available as
part of the z-score calculations. As part of the blinded post hoc analysis for
Down syndrome in our previous report, the z-scores were based on GC
normalization and use of a repeat masked reference genome post alignment, in order to
more accurately reflect the mappable genome from each chromosome. The results of trisomy
18 and 13 presented earlier were adjusted for GC-content bias, but repeat masking was
not done. We compared those results with the effect of repeat masking followed by GC
correction on the results of chromosome 18 and 13. For the results of chromosome 18, the
detection rate for trisomy 18 was unchanged, but the number of euploid pregnancies with
a z-score of 3 or higher increased from 5 to 11. In addition, the complete
separation between trisomy 18 and euploid measurements achievable with the original
measurements was not maintained after repeat masking (see Supplementary Figure S3 online). For the results of chromosome 13
interpretations for, there was little impact of repeat masking on the detection rate of
trisomy 13, false-positive rate, or separation between measurements from the trisomy 13
and euploid pregnancies (see Supplementary Figure S4
online).
Overall MPSS test performance for detecting trisomies
In this study, 1,971 of 1,988 samples (99.1%) received a clinical interpretation for
all three chromosomes based on a consistent z-score cutoff of 3.0. Of the 17
samples in which it was not possible to provide an interpretation, three occurred in
trisomy 18 pregnancies and 14 in euploid pregnancies. The rate of chromosome abnormality
among the failures was 18% (95% CI 4–43%), not significantly different from the
overall rate in the study population of 14% ([212 + 62 + 12]/1,988, 95% CI
12–16%). Among the 283 interpreted samples with one of the three common autosomal
trisomies, the detection rate was 98.9% (280/283, 95% CI 96.9–99.8%). Two
false-negatives occurred among the 212 Down syndrome pregnancies, and the third
false-negative was among the 12 trisomy 13 pregnancies. The corresponding false-positive
rate was 1.4% (24/1,688, 95% CI 0.9–2.1%), mostly due to chromosome 18 and 13.
More detailed information is available online (see Supplementary
Tables S2 and S3 online). Were the
z-score cutoff levels for trisomy 18 and 13 reset to be more restrictive,
within the vertical gray zones depicted in , the overall detection rate could remain at 98.9%, but the
false-positive rate would be reduced to 0.1% (2/1,688, 95% CI <0.1–0.4%). Given
the data-dependent nature of this estimate, a more conservative estimate of 0.5% for
this lower limit of the false-positive rate is used for modeling.
MPSS as a secondary test among high-risk patients
(additional information in Supplementary Tables S4 and S5 online)
shows the impact of introducing reflexive MPSS testing for women classified as
screen-positive by the combined, quadruple, or integrated/sequential screening test. The
first row in shows the performance of the
combined screening test for identifying Down syndrome and trisomy 18, followed by
diagnostic testing in the women with the highest risk. Among the 2.8 million screened
women, 5,156 pregnancies with Down syndrome and 888 with trisomy 18 are expected at
term. The combined test identifies 4,362 cases of Down syndrome (85%) and 772 of trisomy
18 (87%), along with 148,079 (5.3%) unaffected pregnancies (5% positive for Down
syndrome and 0.3% positive for trisomy 18). Together, these 153,213 women have a 1:29
odds of delivering an offspring with Down syndrome or trisomy 18. An estimated 114,307
of these women accept diagnostic testing, with uptake based on their assigned risks. An
estimated 548 procedure-related losses are expected, assuming a rate of 1 loss per 200
procedures.[22,23] The next two rows show the same analysis for quadruple and
integrated testing.The lower half of shows the impact of MPSS
testing on all screen-positive women before diagnostic testing. Using the combined test
as an example, only 298 (0.2%) of the 108,418 women with false-positive screening
results are expected to also have a false-positive MPSS test. Among the 4,384
screen-positive Down syndrome pregnancies, 4,340 (98.9%) will have a positive MPSS test.
Among all women with a positive test, the odds of having a Down syndrome or trisomy 18
pregnancy is about 7:1. In addition, the 1,386 (0.9%) with a failed test will also be
offered diagnostic testing, yielding a total of 6,792 procedures and 34
procedure-related losses. The improvement gained by conducting the MPSS testing after a
screen-positive result, rather than directly offering diagnostic testing is summarized
in . The proportion of all prenatally
diagnosed Down syndrome pregnancies improves from 78% to 84% with the use of MPSS as an
intervening test; a smaller improvement is found for trisomy 18. Such use of MPSS
testing also has the potential to reduce procedure-related losses in the United States
by 95% (from 551 to 34/year). The final two rows provide similar information for those
same women tested via quadruple or integrated/sequential testing.
Discussion
Together with our previous results that focused on Down syndrome,[10] this study provides strong evidence that MPSS secondary
screening using maternal plasma samples from high-risk pregnancies will simultaneously
identify nearly all cases of trisomy 18 and 13. An interpretation of the MPSS test for the
three aneuploidies was possible for 99.1% of samples, with an overall detection rate of
98.9% (280/283). The three false-negatives include two Down syndrome and one trisomy 13
pregnancy. The corresponding false-positive rate was 1.4%, but most of these could be
avoided by slightly raising the z-score cutoff levels for trisomy 18 and 13. The
laboratory-developed test for these disorders had not yet been subjected to a separate
in-house clinical validation when these samples were tested. Thus, the z-score
cutoff of 3 was chosen for this study to be consistent with that found suitable for Down
syndrome. Using slightly higher cutoff levels for trisomy 18 and 13, and routinely
applying GC adjustment and repeat masking for chromosome 21 interpretations would be
expected to reduce the overall false-positive rate to below 0.5%. However, repeat masking
within the data processing for chromosome 18 and 13 interpretations provided mixed
results. There was little impact on chromosome 13, but repeat masking for the result of
chromosome 18 increased the false-positive rate, and resulted in more overlap between the
trisomy 18 and euploid population.A full clinical interpretation was not possible for 17 of the pregnancies, even after
testing a second aliquot. Among these, the risk of aneuploidy was similar to the 15%
occurring in the population with successful testing. Even in routine clinical practice,
the prior risk would be sufficiently high (3–5%, ) that women with failed MPSS testing would still be offered invasive
testing and chromosome analysis. Due to this opportunity for accurate diagnosis for women
with a failed MPSS test, those samples were not included in the calculation of MPSS test
performance.Two previous studies have examined MPSS testing for trisomy 18 and 13. In a
proof-of-concept study by Fan and colleagues,[13]
9 cases of trisomy 21, 2 cases of trisomy 18, and 1 case of trisomy 13 were successfully
identified with no false-positive results among six euploid pregnancies. In a larger, more
recent study, MPSS testing was performed on 392 maternal plasma samples, including samples
from 37 pregnancies with trisomy 18 and 25 with trisomy 13.[15] Using a previously standardized z-score method developed
for trisomy 21, 27 cases of trisomy 18 cases (73%) and 9 cases of trisomy 13 (36%) were
identified, with false-positive rates of 2.8% and 7.6%, respectively. After adjustments
(removal of repeat masking and accounting for GC-content bias), the detection rate for
trisomy 18 and 13 improved to 91.9% at a 2.0% false-positive rate and to 100% at a 1.1%
false-positive rate, respectively. This study also used GC-adjusted chromosome 18 and 13
results without repeat masking and found considerably better performance than the earlier
study.[15] This is most likely due to higher
quality sequence data and higher total reads per patient (DNA fragments sequenced for
which their chromosome of origin could be reliably identified) in this study (average 19
million without repeat masking) using the Illumina HiSeq 2000 platform, compared with
those achieved using the Illumina GAIIx platform (average 4.6 million reads without repeat
masking). Overall, we found the addition of repeat masking to the chromosome 18 and 13
analysis to be detrimental to test performance.The turnaround time for MPSS testing and laboratory director's sign-out of
individual results has already been documented to be no more than 10 days, 90% of the
time.[10] The clinical advantages of offering
MPSS testing as the next step after a positive screening test are substantial. Far fewer
of the false-positive high-risk women will remain in that category after MPSS testing. As
a result, the risk of losing an unaffected pregnancy due to an unnecessary invasive
diagnostic test is expected to be substantially lower, albeit with a rare potential for a
missed aneuploidy. On the other hand, a higher proportion of women who are at high risk
and then receive an MPSS-positive result might opt for invasive testing. Counseling for
couples with a positive MPSS test result would include information that the chance of an
affected pregnancy is very high, >50% (). The
end result is the prospect that a higher proportion of women at high risk for Down
syndrome, trisomy 18, and 13 pregnancies would choose prenatal diagnosis, due to greater
confidence in the screening and diagnostic process.Currently, there is insufficient experience with MPSS testing to consider offering it as
a primary screening test in the general population. In addition, the resources needed to
offer it to two or three million pregnant women each year are substantial. However,
introduction of MPSS testing as part of routine clinical practice can occur by offering
high-risk women counseling about the benefits and risks associated with choosing MPSS
testing as a secondary screening test, versus a direct offer of invasive diagnostic
testing. Given the inherent delay, this decision-making process needs to be studied.
Alternatively, a woman choosing serum/ultrasound based screening could provide two
additional plasma samples at the outset. The plasma samples could be processed, kept in
storage, and then be reflexively tested in the event that her screening result indicates
high risk. This approach would reduce delays and anxiety associated with informing these
women of their high-risk status in order to obtain the plasma samples for MPSS testing. It
would also streamline the transition from screening to diagnostic testing in a seamless
and unobtrusive manner. The relative cost of drawing and saving additional blood tubes
(most of which would never be needed clinically) is a potential drawback to the reflexive
testing strategy, although unused aliquots could be used for quality control and process
improvements.The detection of Down syndrome remains the primary aim of prenatal screening. However,
first and second trimester interpretations for trisomy 18 and first trimester
interpretations for trisomy 13 are already part of current prenatal screening practice. It
is, therefore, reasonable for MPSS to have the capacity to identify these three common
autosomal aneuploidies. This report demonstrates that MPSS can identify nearly all cases
of Down syndrome, trisomy 18, and trisomy 13 among women at high risk for these disorders
as early as 10 weeks' gestation, and can be implemented effectively in a high-risk
clinical setting.
Disclosure
G.E.P. and J.A.C. were members of the Sequenom Clinical Advisory Board for 6 months and
resigned when the study was funded. D.v.d.B., M.E., and A.T.B. are employees and
shareholders of Sequenom, Inc. C.D. is an employee of Sequenom Center for Molecular
Medicine and shareholder of Sequenom, Inc.Sequenom, Inc., fully funded the project through a grant to Women & Infants Hospital
of Rhode Island. The Sequenom Center for Molecular Medicine (SCMM) was responsible for
developing an internally validated laboratory-developed test for detecting Down syndrome
in maternal plasma using massively parallel shotgun sequencing and for providing clinical
interpretation of the test results. The SCMM also identified, equipped, and trained an
independent laboratory to test a subset of samples through a separate contract with the
University of California–Los Angeles (S.F.N. and W.W.G.). The sponsor did not
control the study design, identify or communicate with enrollment sites, thaw or test
samples before the formal testing period, have access to patient information before all
testing was completed, analyze study results, prepare drafts of the manuscript, or have
final decisions on manuscript content.The other authors declare no conflict of interest.
Table 1
Demographic and pregnancy-related data for the trisomy 18 and 13 cases and their
matched controls
Table 2
Screening and diagnostic testing of 2,800,000 women in the United States, with and
without reflexive MPSS testing
Authors: J E Haddow; G E Palomaki; G J Knight; J Williams; A Pulkkinen; J A Canick; D N Saller; G B Bowers Journal: N Engl J Med Date: 1992-08-27 Impact factor: 91.245
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