Direct detection of early-stage cancers using circulating tumor DNA

Jillian Phallen, Mark Sausen, Vilmos Adleff, Alessandro Leal, Carolyn Hruban, James White, Valsamo Anagnostou, Jacob Fiksel, Stephen Cristiano, Eniko Papp, Savannah Speir, Thomas Reinert, Mai-Britt Worm Orntoft, Brian D Woodward, Derek Murphy, Sonya Parpart-Li, David Riley, Monica Nesselbush, Naomi Sengamalay, Andrew Georgiadis, Qing Kay Li, Mogens Rørbæk Madsen, Frank Viborg Mortensen, Joost Huiskens, Cornelis Punt, Nicole van Grieken, Remond Fijneman, Gerrit Meijer, Hatim Husain, Robert B Scharpf, Luis A Diaz Jr, Siân Jones, Sam Angiuoli, Torben Ørntoft, Hans Jørgen Nielsen, Claus Lindbjerg Andersen, Victor E Velculescu, Jillian Phallen, Mark Sausen, Vilmos Adleff, Alessandro Leal, Carolyn Hruban, James White, Valsamo Anagnostou, Jacob Fiksel, Stephen Cristiano, Eniko Papp, Savannah Speir, Thomas Reinert, Mai-Britt Worm Orntoft, Brian D Woodward, Derek Murphy, Sonya Parpart-Li, David Riley, Monica Nesselbush, Naomi Sengamalay, Andrew Georgiadis, Qing Kay Li, Mogens Rørbæk Madsen, Frank Viborg Mortensen, Joost Huiskens, Cornelis Punt, Nicole van Grieken, Remond Fijneman, Gerrit Meijer, Hatim Husain, Robert B Scharpf, Luis A Diaz Jr, Siân Jones, Sam Angiuoli, Torben Ørntoft, Hans Jørgen Nielsen, Claus Lindbjerg Andersen, Victor E Velculescu

Abstract

Early detection and intervention are likely to be the most effective means for reducing morbidity and mortality of human cancer. However, development of methods for noninvasive detection of early-stage tumors has remained a challenge. We have developed an approach called targeted error correction sequencing (TEC-Seq) that allows ultrasensitive direct evaluation of sequence changes in circulating cell-free DNA using massively parallel sequencing. We have used this approach to examine 58 cancer-related genes encompassing 81 kb. Analysis of plasma from 44 healthy individuals identified genomic changes related to clonal hematopoiesis in 16% of asymptomatic individuals but no alterations in driver genes related to solid cancers. Evaluation of 200 patients with colorectal, breast, lung, or ovarian cancer detected somatic mutations in the plasma of 71, 59, 59, and 68%, respectively, of patients with stage I or II disease. Analyses of mutations in the circulation revealed high concordance with alterations in the tumors of these patients. In patients with resectable colorectal cancers, higher amounts of preoperative circulating tumor DNA were associated with disease recurrence and decreased overall survival. These analyses provide a broadly applicable approach for noninvasive detection of early-stage tumors that may be useful for screening and management of patients with cancer.

Copyright © 2017 The Authors, some rights reserved; exclusive licensee American Association for the Advancement of Science. No claim to original U.S. Government Works.

Figures

Figure 1.. Schematic of TEC-Seq method.
Figure 1.. Schematic of TEC-Seq method.
Cell-free DNA is extracted from blood and converted to a genomic library through ligation of a pool containing a small number of dual index barcode adapters. The resulting cfDNA library is captured and redundantly sequenced to produce multiple duplicates of each DNA fragment. Sequence reconciliation among duplicate fragments identifies alterations present in identical DNA molecules with the same start and end position and exogenous barcodes. Alignment to the reference genome of multiple distinct molecules containing identical redundant changes is used to identify bona fide alterations.
Figure 2.. TEC-Seq error correction.
Figure 2.. TEC-Seq error correction.
Sequencing error rates of conventional next generation sequencing and theoretical upper limit for TEC-Seq are indicated at each base in the captured regions of interest (P

Figure 3.. cfDNA and ctDNA in healthy…

Figure 3.. cfDNA and ctDNA in healthy individuals and patients with cancer.

Amount of cfDNA…

Figure 3.. cfDNA and ctDNA in healthy individuals and patients with cancer.
Amount of cfDNA extracted from all heathy individuals and patients with different cancer types (ng/ml) (A) and from cancer patients of different stages (B). Mutant allele fraction (%) of ctDNA detected in heathy individuals and patients with different cancer types (C) and in cancer patients of different stages (D). Means for each group are represented by the black bars in the columns analyzed. In patients for whom multiple alterations were detected, the highest value is indicated. Clinical characteristics of patients and stages are indicated in table S3.

Figure 4.. ctDNA in patients with breast,…

Figure 4.. ctDNA in patients with breast, colorectal, lung, and ovarian cancer.

Patients (n =…

Figure 4.. ctDNA in patients with breast, colorectal, lung, and ovarian cancer.
Patients (n = 194) are each represented by a tick mark. Left: Bar chart shows the number of alterations detected for each case. Center: Stage, cancer type, and histopathological subtype are represented by colored vertical bars. Right: Mutant allele fractions for each alteration detected per patient are indicated with an ‘x’ at the mean. Alterations are colored based on hot-spot status and whether any alterations were detected in the case.

Figure 5.. Concordance between alterations in plasma…

Figure 5.. Concordance between alterations in plasma and tissue.

Mutant allele fractions observed in the…

Figure 5.. Concordance between alterations in plasma and tissue.
Mutant allele fractions observed in the plasma are indicated for each alteration identified with a black bar at the mean. Presence of alterations in matched tumor specimens is indicated with green dots, whereas non-concordant alterations are indicated in orange and those not assessed in gray. Stage and cancer type for each patient are plotted in the two horizontal tracks at the bottom of the figure.

Figure 6.. Pre-operative ctDNA amounts and outcome…

Figure 6.. Pre-operative ctDNA amounts and outcome in colorectal cancer patients.

Kaplan-Meier curves depict progression-free…

Figure 6.. Pre-operative ctDNA amounts and outcome in colorectal cancer patients.
Kaplan-Meier curves depict progression-free survival (A, Log-rank test p < 0.0001) and overall survival (B, Log-rank test p < 0.0001) of 31 colorectal cancer patients, stage I - IV, stratified based on a ctDNA mutant allele fraction threshold of 2%. Kaplan-Meier analyses of the 27 patients with stage I - III disease for progression-free survival (C, Log-rank test p = 0.0006) and overall survival (D, Log-rank test p < 0.0001) were performed using the same threshold to examine the association of ctDNA with outcome in patients without stage IV disease.
Figure 3.. cfDNA and ctDNA in healthy…
Figure 3.. cfDNA and ctDNA in healthy individuals and patients with cancer.
Amount of cfDNA extracted from all heathy individuals and patients with different cancer types (ng/ml) (A) and from cancer patients of different stages (B). Mutant allele fraction (%) of ctDNA detected in heathy individuals and patients with different cancer types (C) and in cancer patients of different stages (D). Means for each group are represented by the black bars in the columns analyzed. In patients for whom multiple alterations were detected, the highest value is indicated. Clinical characteristics of patients and stages are indicated in table S3.
Figure 4.. ctDNA in patients with breast,…
Figure 4.. ctDNA in patients with breast, colorectal, lung, and ovarian cancer.
Patients (n = 194) are each represented by a tick mark. Left: Bar chart shows the number of alterations detected for each case. Center: Stage, cancer type, and histopathological subtype are represented by colored vertical bars. Right: Mutant allele fractions for each alteration detected per patient are indicated with an ‘x’ at the mean. Alterations are colored based on hot-spot status and whether any alterations were detected in the case.
Figure 5.. Concordance between alterations in plasma…
Figure 5.. Concordance between alterations in plasma and tissue.
Mutant allele fractions observed in the plasma are indicated for each alteration identified with a black bar at the mean. Presence of alterations in matched tumor specimens is indicated with green dots, whereas non-concordant alterations are indicated in orange and those not assessed in gray. Stage and cancer type for each patient are plotted in the two horizontal tracks at the bottom of the figure.
Figure 6.. Pre-operative ctDNA amounts and outcome…
Figure 6.. Pre-operative ctDNA amounts and outcome in colorectal cancer patients.
Kaplan-Meier curves depict progression-free survival (A, Log-rank test p < 0.0001) and overall survival (B, Log-rank test p < 0.0001) of 31 colorectal cancer patients, stage I - IV, stratified based on a ctDNA mutant allele fraction threshold of 2%. Kaplan-Meier analyses of the 27 patients with stage I - III disease for progression-free survival (C, Log-rank test p = 0.0006) and overall survival (D, Log-rank test p < 0.0001) were performed using the same threshold to examine the association of ctDNA with outcome in patients without stage IV disease.

Source: PubMed

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