This application relates generally to techniques for performing sample analysis by evaluating light emanating from the objects in a sample. The application also relates to components, devices, systems, and methods pertaining to such techniques.
The present disclosure relates generally to techniques that determine object characteristics using light emanating from the objects. More specifically, the techniques can use filter arrangements to transmit and/or reflect light with time variation, such as where the objects are moving relative to the filter arrangements.
Various techniques have been proposed for using light emanating from objects. For example, U.S. Pat. No. 7,358,476 (Kiesel et al.) describes a fluidic structure with a channel along which is a series of sensing components to obtain information about objects traveling within the channel, such as droplets or other objects carried by fluid. A sensing component includes a set of cells that photosense a range of photon energies that emanate from objects. A processor can receive information about objects from the sensing components and use it to obtain spectral information. Additional techniques are described, for example, in U.S. Patent Application Publications 2008/0181827 (Bassler et al.) and 2008/0183418 (Bassler et al.) and in U.S. Pat. No. 7,701,580 (Bassler et al.), U.S. Pat. No. 7,894,068 (Bassler et al.), U.S. Pat. No. 7,547,904 (Schmidt et al.), U.S. Pat. No. 8,373,860 (Kiesel et al.), U.S. Pat. No. 7,420,677 (Schmidt et al.), and U.S. Pat. No. 7,386,199 (Schmidt et al.).
Also, various flow cytometry techniques have been proposed.
Some embodiments described herein relate to a system configured to spatially modulate light and to determine various characteristics of objects based on the spatially modulated light. The system includes a spatial filter having a plurality of mask features disposed along a longitudinal axis of the filter. A detector is positioned to sense light emanating from at least one object moving in a flow path along a flow direction that corresponds to the longitudinal axis of the filter. As the intensity of the sensed light is modulated according to the mask features the detector generates a time varying electrical signal comprising a sequence of time modulated pulses responsive to the sensed light. The system includes an analyzer configured to measure a pulse width of at least some of the pulses at a fraction of an amplitude extremum of the pulses. The analyzer determines a length of the object along the flow direction based on the measured pulse widths.
Some embodiments are directed to a method of determining object length. Light emanating from at least one object moving along in a flow path along a flow direction of a spatial filter is sensed. The spatial filter has a plurality of mask features comprising first features alternating with second features along the flow direction. The first features have first light transmission characteristics and the second features having second light transmission characteristics, different from the first light transmission characteristics. An intensity of the sensed light is modulated according to the mask features. A time varying electrical signal is generated which includes a plurality of pulses responsive to the sensed light. A pulse width of at least some of the pulses is measured at a fraction of a local extremum value of the pulses. The length of the object along the flow direction is determined based on the measured pulse widths.
The above summary is not intended to describe each disclosed embodiment or every implementation of the present disclosure. The figures and the detailed description below more particularly exemplify illustrative embodiments.
Throughout the specification reference is made to the appended drawings wherein:
The figures are not necessarily to scale. Like numbers used in the figures refer to like components. However, it will be understood that the use of a number to refer to a component in a given figure is not intended to limit the component in another figure labeled with the same number.
The embodiments described herein perform sample analysis to determine the dimensional characteristics of an object, in particular, the length (sometimes referred to as diameter in the case of disc-shaped or spherically-shaped objects) of the object in a flow direction. The determination of dimensional characteristics described herein is based on spatially modulated light emanating from the object. In particular, the techniques disclosed herein make use of at least one spatial filter, also referred to as a mask, that can be deployed in a variety of applications, including analysis of system properties and/or detection of various characteristics of analyte in a sample. In some implementations, a non-imaging photodetector is used to generate a time varying electrical output signal based on the spatially modulated light allowing for compatibility with high-throughput cytometry.
Object length determination approaches described herein involve sensing light emanating from an object moving along an enclosed, partially enclosed or unenclosed flow path. The sensed light is modulated according to features of a mask as the object moves along the flow path along a flow direction of the mask. The mask includes a plurality of mask features comprising first features having first light transmission characteristics alternating with second features having second light transmission characteristics, different from the first light transmission characteristics. As used herein, the terms “first” and “second” identify mask features having differing characteristics and these terms are not meant imply any particular order or arrangement of the mask features. For example, in some implementations, the first mask features are substantially transparent and the second features are substantially opaque. At least one detector is positioned to sense light emanating from at least one object moving in a flow path along the flow direction. An intensity of the sensed light is modulated according to the mask features. The detector generates a time varying electrical signal comprising a plurality of time modulated pulses in response to the sensed light. An analyzer measures the pulse widths of the pulses at a fraction of a local amplitude extremum of the pulses. For example, the local amplitude extremum may be a maximum amplitude for positive going pulses and may be a minimum amplitude for negative going pulses. The analyzer determines one or more characteristics of the object along the flow direction based on the pulse widths, at least one of the characteristics being object length long the direction of flow.
The term “object” refers broadly to any object of interest to be detected. In some applications, objects of interest are particles or analytes that are relatively small, and may be microscopic in size. However, the techniques are broadly applicable to objects of any size or shape. A given object of interest may be or include one or a collection of biological cell(s), virus(es), molecule(s), bead(s) (including microbeads), droplets (e.g. oil in water), gas bubbles, or other bit(s) of matter.
Light can emanate from an object, whether through emission (e.g. radiation, fluorescence, incandescence, chemoluminescence, bioluminescence, other forms of luminescence, etc.), scattering (e.g. reflection, deflection, diffraction, refraction, etc.), or transmission, and can be sensed by the detector, e.g., a non-pixelated photodetector. Cells or particles may be treated, e.g., stained or tagged with a suitable fluorescent probe or other agent, in such a way that they emit light or absorb light in a predictable fashion when illuminated with excitation light. In this regard, the light emitted by a given excited particle may be fluorescent in nature, or it may constitute a form of scattered light such as in the case of Raman scattering. For simplicity, the light that emanates from (by e.g., scattering, emission, or transmission) by an object is referred to herein as “emanating light” or “light emanating.” It will be understood that the techniques, assemblies, apparatuses, systems, and methods described herein are applicable to detecting all forms of light emanating from an object or constituent parts thereof.
The fluidic device 120 is adapted to receive a sample of interest to be analyzed. The sample may enter the fluidic device 120 at an inlet 121a thereof and exit the device 120 at an outlet 121b thereof, flowing generally along the x-direction along a flow path 123 which may be formed between confining members 122, 124. The members 122, 124 may be or comprise plates or sheets of glass, plastic, or other suitable materials. One or both of members 122, 124 may be a microscope slide or a microscope cover glass, or portion thereof. The members 122, 124 need not, however, be planar in shape. For example, they may be portions of a unitary tube or pipe having a cross section that is circular, rectangular, or another shape. Other non-planar shapes are also contemplated. In some cases, confinement of the sample may not be necessary, whereupon one or both of members 122, 124 may be omitted. At least a portion of the confining members 122 and 124 is transmissive to light. A portion of the confining member 122 is transmissive to excitation light emitted by the light source 112 at least in an excitation region 123a. In that regard, light source 112 may emit excitation light 112a towards the flow path 123. Likewise, a portion of the confining member 124 is transmissive to light emanating from the objects 105 at least in an excitation region 123a. In that regard, objects 105 may generate emanating light 107 towards the detector 130.
In some cases, the light source 112 may comprise a conventional light emitting diode (LED) source or a resonant cavity LED (RC-LED) source. If desired, the light source may incorporate one or more filters to narrow or otherwise tailor the spectrum of the resultant output light. Whichever type of light source is selected, the spectral makeup or composition of the excitation light emitted by the source 112 is preferably tailored to excite, scatter, or otherwise cause emanation of light from at least some of the objects that may be present in the sample, as discussed further below.
The sample is depicted as containing exemplary objects 105 of varying sizes and shapes. The objects 105 emanate light 107 in all directions (only some directions are illustrated). The objects 105 may have a variety of characteristics, some of which can be determined by the analyzer 150 based on the emanating light 107.
The detector 130 receives time varying light emanating from the objects 105 as modulated by the spatial filter 126 and generates an electrical signal in response to the time varying light. The time variation in the light detected by the detector 130 may be the result of interaction between the excitation light and an input spatial filter to create spatially patterned excitation light that illuminates the object 105. Alternatively, the time variation in the light detected by the detector 130 may be the result of interaction between light emanating from the objects 105 and an output spatial filter. In some embodiments, the detector includes an additional optical filter arranged between the detector and the objects. An optical filter can be particularly useful when the emanating light is fluorescent light and the optical filter is configured to substantially block the wavelengths of the excitation light and to substantially pass the wavelengths of the light emanating from the objects.
The assembly 100 of
According to various implementations, an input spatial filter may comprise a physical mask including a sequence or pattern of first mask features that have a first light transmission characteristic, e.g., are more light transmissive, and second mask features that have a second light transmission characteristic, e.g., are less light transmissive. The input spatial filter may alternatively or additionally comprise micro-optics or a patterned light source configured to create the excitation pattern. The excitation pattern can be imaged and/or directed onto the excitation region 123a using optical components for the imaging (e.g., lenses) and/or direction, (e.g., fiber optics or waveguides). In some embodiments an output spatial filter may be utilized and arranged between the objects 105 and the detector 130 at a detection region 123b of the flow channel.
In some embodiments, the excitation region 123a and the detection region 123b overlap. In other embodiments, there may be partial overlap between the excitation and detection regions or the excitation and detection regions may be non-overlapping or multiple detection regions and/or excitation regions may be used with various overlapping and/or non-overlapping arrangements.
In the assembly 100 shown in
According to some embodiments of the assembly 100 that include an input spatial filter, as an object 105 travels in the flow direction 123c in the excitation region 123a of the flow channel 123, light emanating from the light source 112 is alternately substantially transmitted to the object 105 and substantially blocked or partially blocked from reaching the object 105 as the object 105 travels along the flow direction 123c. The alternate transmission and non-transmission (or reduced transmission) of the excitation light 112a along the flow direction 123c produces time-varying light 107 emanating from the object 105. The time-varying light 107 emanating from the object 105 falls on the detector 130 and, in response, the detector 130 generates a time-varying detector output signal 134.
According to some embodiments of the assembly 100 that include the output spatial filter configuration, light 112a from the light source 112 illuminates the object 105, causing the object 105 to emanate light 107. As the object 105 travels in the flow direction 123c in the detection region 123b of the flow channel 123, the output spatial filter alternatively entirely or substantially blocks the light 107 emanating from the object 105 from reaching the detector 130 and substantially transmits the light 107 emanating from the object 105 to the detector 130. The alternate substantial transmission and blocking (or partial blocking) of the light 107 emanating from the object 105 as the object 105 flows through the detection region 123b produces time varying light that falls on the detector 130. In response, the detector 130 generates the time-varying detector output signal 134.
In some embodiments such as the embodiment of
For conversion, the signal processor 140 may use known techniques such as discrete Fourier transform including, for example, a Fast Fourier Transform “FFT” algorithm. Thus, the frequency domain output signal 136 represents the frequency component magnitude of the time-varying detector output signal 134, where the frequency component magnitude is the amount of a given frequency component that is present in the time-varying detector output signal 134 or function. The Fourier signal power is a relevant parameter or measure because it corresponds to the function or value one would obtain by calculating in a straightforward manner the Fourier transform (e.g. using a Fast Fourier Transform “FFT” algorithm) of the time-varying signal 134. However, other methods or techniques of representing the frequency component magnitude, or other measures of the frequency component magnitude, may also be used. Examples may include e.g. the square root of the Fourier signal power, or the signal strength (e.g. as measured in voltage or current) obtained from a filter that receives as input the time-varying detector output signal 134.
In
As discussed previously, the spatial filter 226 may comprise, for example, a spatial mask. As will be discussed in greater detail subsequently, the spatial filter 226 may have a plurality of mask features 270. The mask features 270 can include first features having a first light transmissive characteristic and second features having a second light transmissive characteristic, different from the first characteristic. For example, the first features 270a may be regions that are more light transmissive and the second features 270b may be regions that are less light transmissive. The pattern or sequence of transmissive features 270a and less transmissive regions 270b define a light transmission function that changes based on the characteristics of the object. This transmission function may be substantially periodic, or it may instead be substantially non-periodic. The light emanating from an object is sensed by the detector 230, which is configured to generate a time-varying output signal in response to the sensed light as previously discussed in connection with
The spatial filter 226 may be substantially monochromatic or polychromatic as desired. In a monochromatic mask, the transmissive regions 270a all have substantially the same transmission characteristic, and the non-transmissive regions 270b also all have substantially the same transmission characteristic (but different from that of the transmissive regions 270a). In a simple case, the transmissive regions 270a may all be clear, as in the case of an aperture, and the less transmissive regions 270b may be opaque, as in the case of a layer of black ink, light blocking layer, or other absorptive, reflective, or scattering material. Alternatively, the transmissive regions 270a may all have a given color or light wavelength band pass characteristic, e.g., high transmission for light emanating from an excited object, but low transmission for excitation light. Alternatively, the less transmissive regions 270b may have a low but non-zero light transmission, as in the case of a grey ink or coating, or a partial absorber or reflector. In some embodiments, the spatial filter may include mask features that are opaque or less light transmissive alternating with first mask features that have a first light wavelength band pass characteristic in a first portion of the mask and mask features that are opaque or less light transmissive alternating with second mask features that have a second light wavelength band pass characteristic in a second portion of the mask.
In the embodiment of
Interaction between the output light from the light source 412 and the spatial filter 426 causes spatially modulated excitation light 412a. An optical imaging element 480 is positioned between the filter 426 and the objects 405 and is configured to image the spatially modulated excitation light 412a onto an excitation region of the flow channel 423. Additionally, the optical imaging element 480 may incorporate one or more filters to narrow or otherwise tailor the spectrum of the resultant spatially modulated excitation light. The spatially modulated excitation light causes light 407 emanating from the objects 405 to be spatially modulated as well. The spatially modulated light emanating from the objects 405 is sensed by the detector 430.
Embodiments discussed herein involve analytical approaches to determine various characteristics of objects in the flow path, such as the velocity of the objects and the length of objects along the flow direction of the flow path.
As an example, if the first mask features are substantially transparent and the second mask features are substantially opaque, the electrical signal comprises a sequence of pulses of one polarity, e.g., positive going pulses caused by the increase in light intensity corresponding to the clear features, alternating opposite polarity pulses, e.g., negative going pulses caused by the decrease in light intensity that decrease in amplitude at least partially corresponding to the opaque features. The width of the positive going pulses, the negative going pulses, or both, may be measured and used for object length determination.
As illustrated by the flow diagram of
In some spatial filter configurations, the first mask features are clear (or more light transmissive to the light interacting with the first mask features) and the second mask features are opaque (or less light transmissive to the light interacting with the second mask features). Extrapolation of the object length can involve determining the value of f(x) when a feature length of the first mask features is mathematically set to zero. In some implementations, the first light transmission characteristic corresponds to a particular color of light and determining the length of the object involves determining the length of an object having the particular color.
In some implementations, the velocity of the objects can be determined by measuring the pulse width at 50% of the maximum amplitude and calculating an average of the positive and negative going pulse widths in the pulse pairs. The velocity of the object is related to the slope of the averages with respect to a pulse (or mask feature) number.
Optionally, analysis of the pulse widths of the positive and negative going pulses can be used to determine whether objects are slowing down or accelerating as they move in the flow path past the spatial filter as discussed below in conjunction with
The upper portion of
For an object traveling at known, constant velocity, v, and a known mask feature length, d, the length of the object can be determined from the intensity pulse width at some fractions of the maximum amplitude. However, it will be appreciated that according to the analysis of
In general, for length determination by linear curve fit and extrapolation, two or more mask first features (more light transmissive features) having differing lengths can be used. These mask features can be arranged in any order, but mask features with length that varies linearly along the flow direction, as depicted in
In
In the exemplary embodiment shown in
The changing duty cycles of the first and second mask features 870a, 870b is the result of changing lengths L1, L2 along the x-direction. Thus, each of the first mask features 870a has a length L1 measured from a first starting edge to a second trailing edge. The length L1 of the first mask features 870a is a function of position along the flow direction 823a.
In the embodiment shown, mask features 870 are patterned in a desired manner with dimensions D1 and D2 being the same and L1 and L2 changing in a linear manner. However, in other embodiments mask features 870 may be patterned in another manner (e.g., quadratically, logarithmically, exponentially, inverse proportionally, and/or random) that allows for a data set of pulse widths from the output signal that are associated with lengths of mask features. Thus, the mask features of the spatial filter can be arranged in any order, so long as a data set comprising pulse widths as a function of mask feature length can be obtained for analysis.
As an object moves relative to the spatial filter along the flow direction, the emanating light is sensed by the detector (not shown in
The set of mask feature length measurement points {pi} are conceptually shown as the set of circled points in
The function f(x) transforms the discrete set of pulse width measurement points at the given mask features lengths {pi} into a continuous function that virtually predicts the estimated pulse width for any mask feature length x, even if this feature length is not actually present as one of the existing mask features (i.e., the mask does not actually include a mask feature having this length). The function f({pi},x) allows to extrapolate the predicted pulse width for any mask feature length x, and in particular, for an infinitely small x→0 feature length. Extrapolating the function by mathematically setting the mask feature length to zero effectively eliminates the mask feature length, regardless of its actual size, and yields the estimated radius of the object, where the length of the object is twice the estimated radius. The extrapolation projects the imaginary extension 901a of the fitted line f(x) 901 to the point where d=0 which is the virtual zero opening mask feature width. The length estimation provided by the extrapolation using this technique is self-calibrating, i.e., does not require a separate calibration process for each different mask, since the extrapolated function f(x) is no longer dependent on the actual length of the smallest mask feature size d. However, the absolute object length measurement is dependent of the velocity of the object which is assumed to be constant. The technique is well suited for measuring the object lengths of variable object sizes, small and large, which may be traveling at different velocities in the channel because there are several ways to measure the particle velocity.
In a representative embodiment, the mask features are disposed in a first section arranged in a first linear chirp pattern and a second section arranged in a second linear chirp pattern, wherein the first pattern and the second pattern are symmetrical around a center line extending laterally across the spatial filter. The first mask features are substantially transparent and the second mask features are substantially opaque. The substantially transparent features have a length of about 1 μm at the center line of the mask. The clear features of the first pattern have a linear decrease in length of about 1.5 μm along the flow direction and the clear features of the second pattern have a linear increase in length of about 1.5 μm along the flow direction, while the pitch is constant throughout the mask at about 40 μm. It should be appreciated that the above dimensions are designed for detecting and measuring a specific range of object sizes traveling at a specific velocity range in the channel, and will generally vary based on the desired object size and velocity range.
As shown, the amplitude of the pulses in the output electrical signal 1199 is initially lower toward at time t=0 due to the distribution of the input light 1012a (as exhibited by intensity profile 1000, which has a lower intensity toward the edges 1026a, 1026b of the spatial filter 1026. The amplitude of the pulses increases for a time period due to the increase in the intensity of the input light 1012a (as illustrated by intensity profile 1000) before falling in region 1180 due to the decreased mask feature length of the more light-transmissive regions 1070a (
In addition, a particularly dim object may not generate a substantial amount of emanating light to be detectable through the narrowest first mask features 1070a (
An analyzer can be configured to receive the output electrical signal 1199, determine widths of the pulses, fit a function, e.g., a line, to the pulse widths with respect to the lengths of the mask features 1070, and extrapolate a length of the object in the flow channel from the line. For the symmetrical dual portion mask shown in
Some embodiments involve the use of a spatial filter wherein the length of the first and second features of the spatial filter is constant along the flow direction. In some cases the length of the first features is substantially equal to the length of the second features.
As shown, the amplitude of the positive going pulses in the output electrical signal 1399 is initially low between time t=0 and t=300 due to the distribution of the input light 1212a, as exhibited by intensity profile 1200, which has a lower intensity toward the edges 1226a, 1226b of the spatial filter 1226. The amplitude of the pulses increases for a time period due to the increase in the intensity of the input light 1212a (as illustrated by intensity profile 1200) before falling due to the decrease in the intensity of the input light 1212a.
A spatial filter pattern wherein the length of the first mask features d1 and the length of the second mask features d2 are both constant along the flow direction, where d1 may or may not be the same as d2, is called a periodic mask. In a periodic mask, the basic pattern is that of a periodically repeating identical cell units, where each cell unit is comprised of a pair of mask features: a first mask feature of length d1, followed by a second mask feature of length d2. In some approaches, a periodic mask where all the mask openings are the same (same width and height) may be used to determine object length along the flow direction.
The graph shown in
In
In a scenario where (1) all the mask openings are identical, i.e., d1 is equal to d2; (2) the illumination is the same for each opening; and (3) the velocity is constant, the sum of each successive pair of open and close times should remain approximately the same. However, in many implementations, the three conditions listed above are not met. Due to the uneven (approximately Gaussian) light distribution on the spatial filter as shown in
In addition, there may be defect in one or more of the mask features or the fluidic device. Defects may occur, for example, if the laser used to cut the mask features may leave a ragged edge in one of the openings or if an opening got slightly covered during the manufacturing process. Hence the one defective mask feature may yield an erroneous measurement for the one defective feature. A defective mask feature is likely the cause for the obvious drop in measured open time for peak 14 in the graph of
Two measurements are taken from each open and close mask feature pair, e.g., the width at 20% of the maximum intensity for the positive going pulses and the width at 20% of the minimum intensity width for the negative going pulses. A simple average of the measurements may produce a suboptimal length estimate due to the non-uniformity of the light profile. Accordingly, in some implementations weighted curves are fit to the measured open and closed feature pulse widths, with weights corresponding to the illumination profile.
The points closer to the mask center (near peak 10, circled in the graph of
In
For each opening, the average of open and close pulse widths corresponds to a point midway between open and close values, shown as points along curve 1403, the curve connecting the average points is the average curve 1403. Each average point on curve 1403 is (close time+open time)/2. Thus, twice the average value is the sum of (close time+open time), which should be roughly constant if the velocity is constant. Hence the average curve 1403 for an object that travels at a constant velocity through the channel should look like a horizontally flat line). In
The changes in velocity can also be visually demonstrated by flipping the signal 180 degrees and aligning the first and last minima points with the original signal to demonstrate that the peak centers do not align up (another indication of the object slowing), as discussed in connection with
If multiple pulse width measurements are made for determining multiple object characteristics, e.g., both object length and velocity, the pulse width at two fractional values of the maximum (for positive pulses) or minimum (for negative pulses), e.g., 20% and 50% intensity can be simultaneously measured by setting two intensity thresholds, measuring four successive time points for each feature, and individually pairing the 20% and 50% points together.
Changes in the velocity of the object along the flow path can be detected by inverting the time varying signal 1501 along both they and x axes y, forming inverted signal 1502. The distances between corresponding lower (or upper) peaks indicates that the object's velocity was changing. The distances can be used to determine the amount of velocity change as the object moves through the detection region. In the example provided by
The processes illustrated by graphs 16-19 rely on analysis of the time varying signal generated by the detector. According to these processes, the shape of the time varying signal is analyzed to identify multiple objects overlapping or in close proximity in the detection portion of the flow path. Each of the graphs have an upper modulation envelope formed by the positive going peaks and a lower modulation envelope formed by the negative going peaks. The software algorithm detects multiple particles based on criteria described below and displays the recognition of multiple particles can display a text output such as “multi-particle” in the user interface display, as can be discerned in
The use of a spatial filter can provide the ability to accurately measure object length and velocity using a single detector in a high throughput cytometry settings. The system can tell, based on the resulting waveforms exactly how many objects are traveling in the channel, whether each object is accelerating or slowing down, and how many objects overlap and by how much. In consequence, the system may be able to much more accurately count how many objects have truly passed in the detection region, including overlapping objects, and provide robust information about each object length and velocity. In contrast, existing systems that lack a spatial filter mask as disclosed herein are prone to underestimating the number of objects by counting only one object instead of two or more in cases of collisions (i.e., multiple particles in the detector region). Furthermore, the knowledge of each object length and velocity can be used to eliminate objects outside the range of interest, for example objects that are too large or too small (in terms of the length), or traveling at too high or too slow speeds, etc., which could not be members of the particular objects of interest (e.g., a particular bacteria species, or beads of certain size).
In some implementations, the velocity of the objects can be determined by calculating an average of the positive and negative going pulse widths in the pulse pairs. The velocity of the object is related to the slope of the averages with respect to a pulse (or mask feature) number.
Although the subject matter has been described in language specific to structural features and/or methodological acts, it is to be understood that the subject matter defined in the appended claims is not necessarily limited to the specific features or acts described above. Rather, the specific features and acts described above are disclosed as representative forms of implementing the claims.
This application is a continuation of U.S. Ser. No. 14/181,530, filed Feb. 14, 2014, which is incorporated herein by reference in its entirety.
This invention was made with government support under contract number W911NF-10-1-0479 (3711), awarded by the Department of Defense. The U.S. Government has certain rights in this invention.
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Parent | 14181530 | Feb 2014 | US |
Child | 15960079 | US |