| Literature DB >> 30338678 |
Jeffrey M Cochran1, David R Busch2, Anaïs Leproux3, Zheng Zhang4, Thomas D O'Sullivan3, Albert E Cerussi3, Philip M Carpenter5, Rita S Mehta6, Darren Roblyer7, Wei Yang8, Keith D Paulsen9, Brian Pogue9, Shudong Jiang9, Peter A Kaufman10, So Hyun Chung1, Mitchell Schnall11, Bradley S Snyder12, Nola Hylton13, Stefan A Carp14, Steven J Isakoff15, David Mankoff16, Bruce J Tromberg3, Arjun G Yodh1.
Abstract
Ideally, neoadjuvant chemotherapy (NAC) assessment should predict pathologic complete response (pCR), a surrogate clinical endpoint for 5-year survival, as early as possible during typical 3- to 6-month breast cancer treatments. We introduce and demonstrate an approach for predicting pCR within 10 days of initiating NAC. The method uses a bedside diffuse optical spectroscopic imaging (DOSI) technology and logistic regression modeling. Tumor and normal tissue physiological properties were measured longitudinally throughout the course of NAC in 33 patients enrolled in the American College of Radiology Imaging Network multicenter breast cancer DOSI trial (ACRIN-6691). An image analysis scheme, employing z-score normalization to healthy tissue, produced models with robust predictions. Notably, logistic regression based on z-score normalization using only tissue oxygen saturation (StO2) measured within 10 days of the initial therapy dose was found to be a significant predictor of pCR (AUC = 0.92; 95% CI: 0.82 to 1). This observation suggests that patients who show rapid convergence of tumor tissue StO2 to surrounding tissue StO2 are more likely to achieve pCR. This early predictor of pCR occurs prior to reductions in tumor size and could enable dynamic feedback for optimization of chemotherapy strategies in breast cancer.Entities:
Keywords: biomedical optics; breast cancer; diffuse optical spectroscopy; neoadjuvant chemotherapy; therapy monitoring; translational imaging
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Year: 2018 PMID: 30338678 PMCID: PMC6194199 DOI: 10.1117/1.JBO.24.2.021202
Source DB: PubMed Journal: J Biomed Opt ISSN: 1083-3668 Impact factor: 3.170
Subject and tumor characteristics. Demographic, histological, and immunohistochemical data are provided for all subjects and divided into complete responder (pCR) and noncomplete responder (non-pCR) groups. For histological information, IDC refers to invasive ductal carcinoma, ILC refers to invasive lobular carcinoma, and DCIS is ductal carcinoma in-situ. ER, PR, and Her2 represent estrogen receptor, progesterone receptor, and human epidermal growth factor receptor status, respectively.
| pCR ( | Non-pCR ( | |
|---|---|---|
| Age (years) | ||
| | ||
| Menopausal status, | ||
| Pre | 5 (33) | 9 (50) |
| Peri | 1 (7) | 2 (11) |
| Post | 9 (60) | 7 (39) |
| Maximum tumor size (mm) | ||
| | ||
| Histological findings, | ||
| IDC | 9 (60) | 12 (67) |
| ILC | 0 (0) | 1 (6) |
| IDC/DCIS | 4 (27) | 5 (28) |
| IDC/ILC | 1 (7) | 0 (0) |
| Unknown | 1 (7) | 0 (0) |
| ER status, | ||
| Positive | 5 (33) | 16 (89) |
| Negative | 8 (53) | 2 (11) |
| Unknown | 2 (13) | 0 (0) |
| PR status, | ||
| Positive | 5 (33) | 11 (61) |
| Negative | 8 (53) | 7 (39) |
| Unknown | 2 (13) | 0 (0) |
| Her2 status, | ||
| 1 | 5 (33) | 4 (22) |
| 2 | 1 (7) | 9 (50) |
| 3 | 5 (33) | 1 (6) |
| Unknown | 4 (27) | 4 (22) |
| Molecular subtype, | ||
| Her2 positive | 3 (20) | 1 (6) |
| HR positive | 0 (0) | 2 (11) |
| Luminal A | 0 (0) | 3 (17) |
| Luminal B | 6 (40) | 11 (61) |
| Triple negative | 4 (27) | 1 (6) |
| Unknown | 2 (13) | 0 (0) |
Fig. 6Subject exclusion chart. Of the 60 subjects accrued for this study, withdrew consent, did not have central pathology data, and were excluded for lack of normal tissue measurement. The other subjects were excluded due to lack of baseline DOSI measurement (), baseline DOSI measurements that were not evaluable (), lack of midpoint DOSI measurement (), or too few normal region points were available (). This subject population is identical to the population used in the initial ACRIN 6691 study except that one fewer subject was used. This additional excluded subject did have a normal tissue measurement but not a sufficient number of spatial points in the normal region to perform the necessary standard deviation calculation [see Fig. 2 and Eq. (1)].
Fig. 1Timeline and schematic of DOSI measurement during NAC. (a) Each enrolled subject underwent NAC for a period of 4 to 6 months. DOSI measurements were made at four timepoints throughout the course of therapy: (1) baseline—prior to the administration of therapy, (2) early—5 to 10 days after the first dose of therapy, (3) midpoint—the midpoint of the therapy regimen, (4) final—at least 7 days after the final dose of therapy and prior to tumor resection. Note that some subjects are missing data at one or more of the nonbaseline timepoints, and the measurements at the final timepoint were not used due to their limited predictive utility. (b) Top left: DOSI instrument and probe. Right: a grid of points, over a surface area ranging from to , were measured on the lesion-bearing breast. This grid was chosen to encompass both the tumor and a portion of the surrounding healthy tissue. The grid of points was marked using a transparency, which was then used to mirror the grid for measurements on the contralateral breast. The transparency was also used to ensure consistent measurement locations across all timepoints. The tumor region was chosen to be all contiguous points with magnitude greater than half of the maximum TOI measurement. The tumor-bearing breast normal region was defined as all points outside the tumor region and areola, excluding a 1-cm margin around both the tumor and areola. The contralateral breast normal region was defined as all measured points, excluding the areola and a 1-cm margin around the areola. Bottom left: a sample DOSI image of the TOI contrast mapped onto a 3-D breast surface (see Sec. 2).
Definitions of measured DOSI parameters and their methods of calculation. HHb, , lipid, and concentration are all fit directly using the measured intensities throughout the wavelength range. , , and TOI are all derived from the fit parameters.
| Parameter | Meaning | Calculation Method |
|---|---|---|
| HHb | Deoxy-hemoglobin concentration | Multispectral fit of absorption |
| Oxy-hemoglobin concentration | Multispectral fit of absorption | |
| Lipid | Lipid concentration | Multispectral fit of absorption |
| Water concentration | Multispectral fit of absorption | |
| Total hemoglobin concentration | ||
| Tissue oxygen saturation | ||
| TOI | Tissue optical index |
Fig. 2Histograms of the early timepoint normal tissue for all subjects. (a) Fractional histograms of the unnormalized of the normal tissue on the tumor-bearing breast at the early timepoint for each subject. Each line represents a different subject. (b) Fractional histograms of the -score normalized log-transformed data of the normal tissue on the tumor-bearing breast at the early timepoint for each subject. Each line represents a different subject. Note that with the -score normalization, the distributions for all subjects have the same mean and an approximately Gaussian distribution. This effect is consistent across all measured parameters and timepoints.
Fig. 3Data analysis flowchart. (1) Data processing—measured quantities at all spatial points and all subjects across the first three timepoints are first divided into tumor and normal (healthy) regions (see Fig. 1). All tumor points are then -score normalized to their respective normal (healthy) regions [see Eq. (1)], and the mean is taken for a given subject and timepoint. Finally, one-, two-, or three-model parameters are chosen from among the combinations of measured quantities and timepoints as model inputs. (2) Leave-one-out logistic regression—a set of logistic regression algorithms are performed, each of which leaves out a single subject from the training data and produces a weight vector. Each is then used to calculate the probability of response for the subject left out of the given training set [see Eqs. (2) and (4)]. (3) Model evaluation—ROC analysis is performed using the calculated values to determine the AUC and a median weight vector is calculated from the resulting vectors.
Median -score values with IQRs for each measured parameter and timepoint, separated by pCR status.
| Baseline median | Early median | Midpoint median | ||||
|---|---|---|---|---|---|---|
| pCR | Non-pCR | pcR | Non-pCR | pcR | Non-pCR | |
| 1.5 (1.1, 1.8) | 1.0 (0.4, 1.9) | 1.4 (0.8, 1.7) | 0.6 (0.1, 1.1) | 0.6 (0.4, 1.1) | 0.5 (0.2, 1.3) | |
| HHb | 2.2 (1.5, 2.7) | 1.9 (1.5, 4.0) | 1.5 (1.0, 1.9) | 1.7 (1.2, 3.4) | 1.2 (0.9, 1.6) | 1.4 (0.9, 3.0) |
| 1.8 (1.5, 2.4) | 1.4 (0.8, 2.2) | 1.4 (0.8, 1.8) | 0.9 (0.5, 1.3) | 1.0 (0.7, 1.4) | 0.9 (0.5, 1.6) | |
| 0.4 | ||||||
| 2.1 (1.5, 2.8) | 1.8 (1.2, 3.1) | 1.5 (1.3, 2.3) | 1.2 (0.8, 3.2) | 0.9 (0.4, 2.0) | 1.3 (0.9, 2.3) | |
| Lipid | ||||||
| TOI | 3.0 (1.7, 3.8) | 2.4 (1.6, 4.1) | 1.7 (1.2, 2.4) | 1.5 (1.2, 4.0) | 1.5 (0.9, 2.0) | 1.5 (1.2, 3.2) |
Fig. 4Tumor and normal versus probability of response. This graph shows the probability of response predicted by the regression model using only early timepoint (see Fig. 5). Contour lines of constant probability are also included. The probability of response (shading) is plotted versus the difference between the absolute tumor region percent oxygen saturation and the absolute normal region percent oxygen saturation (horizontal axis), and the size of the confidence interval for the absolute normal region oxygen saturation, corresponding to one standard deviation in the log-transformed data (vertical axis). Note that the oxygen saturation in this figure is not log-transformed or -score normalized. Each cross represents a subject that was a pathologic complete responder while each circle indicates a nonresponding subject. All subjects that had tumor regions with absolute oxygen saturations that were higher than their normal regions achieved pCR. Subjects whose tumor regions were only slightly hypoxic relative to their normal regions were more likely to achieve pCR if the subjects’ normal regions had larger confidence intervals. These observations indicate that a subject is likely to be a pathologic complete responder if the oxygen saturation of the tumor region is either higher than that of the normal region or well within the normal region’s confidence interval. A subject whose tumor was significantly hypoxic relative to the normal tissue was likely to be a nonresponder.
Fig. 5Early timepoint oxygen saturation prediction model. The model providing the best predictions used the early timepoint tissue oxygen saturation (). The median weight vector indicates that tumors that are not hypoxic relative to the normal tissue on the tumor breast are more likely to be pathologic complete responders to chemotherapy. (a) ROC analysis of model—this model produced an (95% CI: 0.82 to 1), indicating excellent predictive value. (b) Boxplots of probability of response—the probability of response boxplots, divided into subjects that achieved pCR () and subjects that did not achieve pCR (), indicate clear separation between the two groups using this model ( using a two-sided student’s -test). The hinges of the boxplots represent the first and third quartiles of the data, the whiskers represent the range of measurements within a distance the IQR, and the cross represents an outlier. Note that there is no overlap between the IQRs of the probability of response of the complete responders and noncomplete responders.